New dataset
Browse files- Img_Desc_Templates.py +100 -0
- desc_dataset.csv +460 -0
- desc_dataset_test.csv +16 -0
- desc_dataset_train.csv +445 -0
- images.tar.gz +3 -0
Img_Desc_Templates.py
ADDED
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# coding=utf-8
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# Copyright 2020 The TensorFlow Datasets Authors and the HuggingFace Datasets Authors.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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# Lint as: python3
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"""Image Description Dataset."""
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import json
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import datasets
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from datasets.tasks import QuestionAnsweringExtractive
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import pandas as pd
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logger = datasets.logging.get_logger(__name__)
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_CITATION = """\
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@article{2016arXiv160605250R,
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author = {{Rajpurkar}, Pranav and {Zhang}, Jian and {Lopyrev},
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Konstantin and {Liang}, Percy},
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title = "{SQuAD: 100,000+ Questions for Machine Comprehension of Text}",
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journal = {arXiv e-prints},
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year = 2016,
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eid = {arXiv:1606.05250},
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pages = {arXiv:1606.05250},
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archivePrefix = {arXiv},
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eprint = {1606.05250},
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}
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"""
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_DESCRIPTION = """\
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Image descriptions for data science charts
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"""
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_URL = "https://huggingface.co/datasets/eduvedras/Img_Desc_Templates/resolve/main/images.tar.gz"
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class Image_DescriptionTargz(datasets.GeneratorBasedBuilder):
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def _info(self):
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return datasets.DatasetInfo(
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description=_DESCRIPTION,
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features=datasets.Features(
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{
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"Chart": datasets.Image(),
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"Description": datasets.Value("string"),
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"Chart_name": datasets.Value("string"),
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}
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),
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# No default supervised_keys (as we have to pass both question
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# and context as input).
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supervised_keys=None,
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homepage="https://huggingface.co/datasets/eduvedras/Img_Desc_Templates",
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citation=_CITATION,
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task_templates=[
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QuestionAnsweringExtractive(
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question_column="question", context_column="context", answers_column="answers"
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)
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],
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)
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def _split_generators(self, dl_manager):
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path = dl_manager.download(_URL)
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image_iters = dl_manager.iter_archive(path)
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metadata_train_path = "https://huggingface.co/datasets/eduvedras/Img_Desc_Templates/resolve/main/desc_dataset_train.csv"
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metadata_test_path = "https://huggingface.co/datasets/eduvedras/Img_Desc_Templates/resolve/main/desc_dataset_test.csv"
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return [
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datasets.SplitGenerator(name=datasets.Split.TRAIN, gen_kwargs={"images": image_iters,
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"metadata_path": metadata_train_path}),
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datasets.SplitGenerator(name=datasets.Split.TEST, gen_kwargs={"images": image_iters,
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"metadata_path": metadata_test_path}),
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]
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def _generate_examples(self, images, metadata_path):
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metadata = pd.read_csv(metadata_path, sep=';')
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idx = 0
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for index, row in metadata.iterrows():
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for filepath, image in images:
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filepath = filepath.split('/')[-1]
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if row['Chart'] in filepath:
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yield idx, {
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"Chart": {"path": filepath, "bytes": image.read()},
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"Description": row['description'],
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"Chart_name": row['Chart'],
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}
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break
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idx += 1
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desc_dataset.csv
ADDED
@@ -0,0 +1,460 @@
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Chart;description
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2 |
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ObesityDataSet_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
3 |
+
ObesityDataSet_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
4 |
+
ObesityDataSet_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
5 |
+
ObesityDataSet_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
6 |
+
ObesityDataSet_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
7 |
+
ObesityDataSet_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
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8 |
+
ObesityDataSet_pca.png;A bar chart showing the explained variance ratio of 8 principal components.
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9 |
+
ObesityDataSet_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
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10 |
+
ObesityDataSet_boxplots.png;A set of boxplots of the variables [].
|
11 |
+
ObesityDataSet_histograms_symbolic.png;A set of bar charts of the variables [].
|
12 |
+
ObesityDataSet_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
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+
ObesityDataSet_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
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14 |
+
ObesityDataSet_histograms_numeric.png;A set of histograms of the variables [].
|
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+
customer_segmentation_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
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16 |
+
customer_segmentation_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
17 |
+
customer_segmentation_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
18 |
+
customer_segmentation_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
19 |
+
customer_segmentation_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
20 |
+
customer_segmentation_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
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customer_segmentation_pca.png;A bar chart showing the explained variance ratio of 3 principal components.
|
22 |
+
customer_segmentation_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
23 |
+
customer_segmentation_boxplots.png;A set of boxplots of the variables [].
|
24 |
+
customer_segmentation_histograms_symbolic.png;A set of bar charts of the variables [].
|
25 |
+
customer_segmentation_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
26 |
+
customer_segmentation_class_histogram.png;A bar chart showing the distribution of the target variable [].
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customer_segmentation_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
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customer_segmentation_histograms_numeric.png;A set of histograms of the variables [].
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+
urinalysis_tests_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
30 |
+
urinalysis_tests_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
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31 |
+
urinalysis_tests_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
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+
urinalysis_tests_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
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+
urinalysis_tests_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
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+
urinalysis_tests_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
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+
urinalysis_tests_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
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urinalysis_tests_pca.png;A bar chart showing the explained variance ratio of 3 principal components.
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37 |
+
urinalysis_tests_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
38 |
+
urinalysis_tests_boxplots.png;A set of boxplots of the variables [].
|
39 |
+
urinalysis_tests_histograms_symbolic.png;A set of bar charts of the variables [].
|
40 |
+
urinalysis_tests_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
41 |
+
urinalysis_tests_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
42 |
+
urinalysis_tests_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
43 |
+
urinalysis_tests_histograms_numeric.png;A set of histograms of the variables [].
|
44 |
+
detect_dataset_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
45 |
+
detect_dataset_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
46 |
+
detect_dataset_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
47 |
+
detect_dataset_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
48 |
+
detect_dataset_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
49 |
+
detect_dataset_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
50 |
+
detect_dataset_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
51 |
+
detect_dataset_pca.png;A bar chart showing the explained variance ratio of 6 principal components.
|
52 |
+
detect_dataset_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
53 |
+
detect_dataset_boxplots.png;A set of boxplots of the variables [].
|
54 |
+
detect_dataset_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
55 |
+
detect_dataset_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
56 |
+
detect_dataset_histograms_numeric.png;A set of histograms of the variables [].
|
57 |
+
diabetes_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
58 |
+
diabetes_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
59 |
+
diabetes_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
60 |
+
diabetes_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
61 |
+
diabetes_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
62 |
+
diabetes_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
63 |
+
diabetes_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
64 |
+
diabetes_pca.png;A bar chart showing the explained variance ratio of 8 principal components.
|
65 |
+
diabetes_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
66 |
+
diabetes_boxplots.png;A set of boxplots of the variables [].
|
67 |
+
diabetes_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
68 |
+
diabetes_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
69 |
+
diabetes_histograms_numeric.png;A set of histograms of the variables [].
|
70 |
+
Placement_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
71 |
+
Placement_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
72 |
+
Placement_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
73 |
+
Placement_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
74 |
+
Placement_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
75 |
+
Placement_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
76 |
+
Placement_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
77 |
+
Placement_pca.png;A bar chart showing the explained variance ratio of 5 principal components.
|
78 |
+
Placement_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
79 |
+
Placement_boxplots.png;A set of boxplots of the variables [].
|
80 |
+
Placement_histograms_symbolic.png;A set of bar charts of the variables [].
|
81 |
+
Placement_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
82 |
+
Placement_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
83 |
+
Placement_histograms_numeric.png;A set of histograms of the variables [].
|
84 |
+
Liver_Patient_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
85 |
+
Liver_Patient_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
86 |
+
Liver_Patient_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
87 |
+
Liver_Patient_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
88 |
+
Liver_Patient_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
89 |
+
Liver_Patient_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
90 |
+
Liver_Patient_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
91 |
+
Liver_Patient_pca.png;A bar chart showing the explained variance ratio of 9 principal components.
|
92 |
+
Liver_Patient_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
93 |
+
Liver_Patient_boxplots.png;A set of boxplots of the variables [].
|
94 |
+
Liver_Patient_histograms_symbolic.png;A set of bar charts of the variables [].
|
95 |
+
Liver_Patient_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
96 |
+
Liver_Patient_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
97 |
+
Liver_Patient_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
98 |
+
Liver_Patient_histograms_numeric.png;A set of histograms of the variables [].
|
99 |
+
Hotel_Reservations_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
100 |
+
Hotel_Reservations_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
101 |
+
Hotel_Reservations_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
102 |
+
Hotel_Reservations_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
103 |
+
Hotel_Reservations_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
104 |
+
Hotel_Reservations_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
105 |
+
Hotel_Reservations_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
106 |
+
Hotel_Reservations_pca.png;A bar chart showing the explained variance ratio of 9 principal components.
|
107 |
+
Hotel_Reservations_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
108 |
+
Hotel_Reservations_boxplots.png;A set of boxplots of the variables [].
|
109 |
+
Hotel_Reservations_histograms_symbolic.png;A set of bar charts of the variables [].
|
110 |
+
Hotel_Reservations_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
111 |
+
Hotel_Reservations_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
112 |
+
Hotel_Reservations_histograms_numeric.png;A set of histograms of the variables [].
|
113 |
+
StressLevelDataset_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
114 |
+
StressLevelDataset_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
115 |
+
StressLevelDataset_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
116 |
+
StressLevelDataset_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
117 |
+
StressLevelDataset_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
118 |
+
StressLevelDataset_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
119 |
+
StressLevelDataset_pca.png;A bar chart showing the explained variance ratio of 10 principal components.
|
120 |
+
StressLevelDataset_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
121 |
+
StressLevelDataset_boxplots.png;A set of boxplots of the variables [].
|
122 |
+
StressLevelDataset_histograms_symbolic.png;A set of bar charts of the variables [].
|
123 |
+
StressLevelDataset_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
124 |
+
StressLevelDataset_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
125 |
+
StressLevelDataset_histograms_numeric.png;A set of histograms of the variables [].
|
126 |
+
WineQT_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
127 |
+
WineQT_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
128 |
+
WineQT_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
129 |
+
WineQT_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
130 |
+
WineQT_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
131 |
+
WineQT_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
132 |
+
WineQT_pca.png;A bar chart showing the explained variance ratio of 11 principal components.
|
133 |
+
WineQT_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
134 |
+
WineQT_boxplots.png;A set of boxplots of the variables [].
|
135 |
+
WineQT_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
136 |
+
WineQT_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
137 |
+
WineQT_histograms_numeric.png;A set of histograms of the variables [].
|
138 |
+
loan_data_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
139 |
+
loan_data_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
140 |
+
loan_data_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
141 |
+
loan_data_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
142 |
+
loan_data_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
143 |
+
loan_data_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
144 |
+
loan_data_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
145 |
+
loan_data_pca.png;A bar chart showing the explained variance ratio of 4 principal components.
|
146 |
+
loan_data_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
147 |
+
loan_data_boxplots.png;A set of boxplots of the variables [].
|
148 |
+
loan_data_histograms_symbolic.png;A set of bar charts of the variables [].
|
149 |
+
loan_data_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
150 |
+
loan_data_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
151 |
+
loan_data_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
152 |
+
loan_data_histograms_numeric.png;A set of histograms of the variables [].
|
153 |
+
Dry_Bean_Dataset_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
154 |
+
Dry_Bean_Dataset_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
155 |
+
Dry_Bean_Dataset_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
156 |
+
Dry_Bean_Dataset_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
157 |
+
Dry_Bean_Dataset_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
158 |
+
Dry_Bean_Dataset_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
159 |
+
Dry_Bean_Dataset_pca.png;A bar chart showing the explained variance ratio of 9 principal components.
|
160 |
+
Dry_Bean_Dataset_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
161 |
+
Dry_Bean_Dataset_boxplots.png;A set of boxplots of the variables [].
|
162 |
+
Dry_Bean_Dataset_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
163 |
+
Dry_Bean_Dataset_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
164 |
+
Dry_Bean_Dataset_histograms_numeric.png;A set of histograms of the variables [].
|
165 |
+
credit_customers_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
166 |
+
credit_customers_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
167 |
+
credit_customers_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
168 |
+
credit_customers_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
169 |
+
credit_customers_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
170 |
+
credit_customers_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
171 |
+
credit_customers_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
172 |
+
credit_customers_pca.png;A bar chart showing the explained variance ratio of 6 principal components.
|
173 |
+
credit_customers_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
174 |
+
credit_customers_boxplots.png;A set of boxplots of the variables [].
|
175 |
+
credit_customers_histograms_symbolic.png;A set of bar charts of the variables [].
|
176 |
+
credit_customers_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
177 |
+
credit_customers_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
178 |
+
credit_customers_histograms_numeric.png;A set of histograms of the variables [].
|
179 |
+
weatherAUS_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
180 |
+
weatherAUS_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
181 |
+
weatherAUS_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
182 |
+
weatherAUS_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
183 |
+
weatherAUS_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
184 |
+
weatherAUS_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
185 |
+
weatherAUS_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
186 |
+
weatherAUS_pca.png;A bar chart showing the explained variance ratio of 7 principal components.
|
187 |
+
weatherAUS_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
188 |
+
weatherAUS_boxplots.png;A set of boxplots of the variables [].
|
189 |
+
weatherAUS_histograms_symbolic.png;A set of bar charts of the variables [].
|
190 |
+
weatherAUS_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
191 |
+
weatherAUS_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
192 |
+
weatherAUS_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
193 |
+
weatherAUS_histograms_numeric.png;A set of histograms of the variables [].
|
194 |
+
car_insurance_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
195 |
+
car_insurance_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
196 |
+
car_insurance_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
197 |
+
car_insurance_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
198 |
+
car_insurance_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
199 |
+
car_insurance_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
200 |
+
car_insurance_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
201 |
+
car_insurance_pca.png;A bar chart showing the explained variance ratio of 9 principal components.
|
202 |
+
car_insurance_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
203 |
+
car_insurance_boxplots.png;A set of boxplots of the variables [].
|
204 |
+
car_insurance_histograms_symbolic.png;A set of bar charts of the variables [].
|
205 |
+
car_insurance_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
206 |
+
car_insurance_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
207 |
+
car_insurance_histograms_numeric.png;A set of histograms of the variables [].
|
208 |
+
heart_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
209 |
+
heart_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
210 |
+
heart_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
211 |
+
heart_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
212 |
+
heart_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
213 |
+
heart_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
214 |
+
heart_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
215 |
+
heart_pca.png;A bar chart showing the explained variance ratio of 10 principal components.
|
216 |
+
heart_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
217 |
+
heart_boxplots.png;A set of boxplots of the variables [].
|
218 |
+
heart_histograms_symbolic.png;A set of bar charts of the variables [].
|
219 |
+
heart_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
220 |
+
heart_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
221 |
+
heart_histograms_numeric.png;A set of histograms of the variables [].
|
222 |
+
Breast_Cancer_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
223 |
+
Breast_Cancer_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
224 |
+
Breast_Cancer_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
225 |
+
Breast_Cancer_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
226 |
+
Breast_Cancer_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
227 |
+
Breast_Cancer_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
228 |
+
Breast_Cancer_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
229 |
+
Breast_Cancer_pca.png;A bar chart showing the explained variance ratio of 10 principal components.
|
230 |
+
Breast_Cancer_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
231 |
+
Breast_Cancer_boxplots.png;A set of boxplots of the variables [].
|
232 |
+
Breast_Cancer_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
233 |
+
Breast_Cancer_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
234 |
+
Breast_Cancer_histograms_numeric.png;A set of histograms of the variables [].
|
235 |
+
e-commerce_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
236 |
+
e-commerce_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
237 |
+
e-commerce_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
238 |
+
e-commerce_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
239 |
+
e-commerce_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
240 |
+
e-commerce_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
241 |
+
e-commerce_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
242 |
+
e-commerce_pca.png;A bar chart showing the explained variance ratio of 6 principal components.
|
243 |
+
e-commerce_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
244 |
+
e-commerce_boxplots.png;A set of boxplots of the variables [].
|
245 |
+
e-commerce_histograms_symbolic.png;A set of bar charts of the variables [].
|
246 |
+
e-commerce_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
247 |
+
e-commerce_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
248 |
+
e-commerce_histograms_numeric.png;A set of histograms of the variables [].
|
249 |
+
maintenance_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
250 |
+
maintenance_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
251 |
+
maintenance_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
252 |
+
maintenance_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
253 |
+
maintenance_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
254 |
+
maintenance_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
255 |
+
maintenance_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
256 |
+
maintenance_pca.png;A bar chart showing the explained variance ratio of 5 principal components.
|
257 |
+
maintenance_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
258 |
+
maintenance_boxplots.png;A set of boxplots of the variables [].
|
259 |
+
maintenance_histograms_symbolic.png;A set of bar charts of the variables [].
|
260 |
+
maintenance_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
261 |
+
maintenance_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
262 |
+
maintenance_histograms_numeric.png;A set of histograms of the variables [].
|
263 |
+
Churn_Modelling_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
264 |
+
Churn_Modelling_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
265 |
+
Churn_Modelling_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
266 |
+
Churn_Modelling_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
267 |
+
Churn_Modelling_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
268 |
+
Churn_Modelling_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
269 |
+
Churn_Modelling_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
270 |
+
Churn_Modelling_pca.png;A bar chart showing the explained variance ratio of 6 principal components.
|
271 |
+
Churn_Modelling_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
272 |
+
Churn_Modelling_boxplots.png;A set of boxplots of the variables [].
|
273 |
+
Churn_Modelling_histograms_symbolic.png;A set of bar charts of the variables [].
|
274 |
+
Churn_Modelling_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
275 |
+
Churn_Modelling_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
276 |
+
Churn_Modelling_histograms_numeric.png;A set of histograms of the variables [].
|
277 |
+
vehicle_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
278 |
+
vehicle_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
279 |
+
vehicle_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
280 |
+
vehicle_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
281 |
+
vehicle_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
282 |
+
vehicle_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
283 |
+
vehicle_pca.png;A bar chart showing the explained variance ratio of 11 principal components.
|
284 |
+
vehicle_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
285 |
+
vehicle_boxplots.png;A set of boxplots of the variables [].
|
286 |
+
vehicle_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
287 |
+
vehicle_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
288 |
+
vehicle_histograms_numeric.png;A set of histograms of the variables [].
|
289 |
+
adult_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
290 |
+
adult_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
291 |
+
adult_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
292 |
+
adult_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
293 |
+
adult_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
294 |
+
adult_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
295 |
+
adult_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
296 |
+
adult_pca.png;A bar chart showing the explained variance ratio of 6 principal components.
|
297 |
+
adult_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
298 |
+
adult_boxplots.png;A set of boxplots of the variables [].
|
299 |
+
adult_histograms_symbolic.png;A set of bar charts of the variables [].
|
300 |
+
adult_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
301 |
+
adult_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
302 |
+
adult_histograms_numeric.png;A set of histograms of the variables [].
|
303 |
+
Covid_Data_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
304 |
+
Covid_Data_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
305 |
+
Covid_Data_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
306 |
+
Covid_Data_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
307 |
+
Covid_Data_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
308 |
+
Covid_Data_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
309 |
+
Covid_Data_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
310 |
+
Covid_Data_pca.png;A bar chart showing the explained variance ratio of 12 principal components.
|
311 |
+
Covid_Data_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
312 |
+
Covid_Data_boxplots.png;A set of boxplots of the variables [].
|
313 |
+
Covid_Data_histograms_symbolic.png;A set of bar charts of the variables [].
|
314 |
+
Covid_Data_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
315 |
+
Covid_Data_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
316 |
+
Covid_Data_histograms_numeric.png;A set of histograms of the variables [].
|
317 |
+
sky_survey_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
318 |
+
sky_survey_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
319 |
+
sky_survey_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
320 |
+
sky_survey_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
321 |
+
sky_survey_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
322 |
+
sky_survey_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
323 |
+
sky_survey_pca.png;A bar chart showing the explained variance ratio of 8 principal components.
|
324 |
+
sky_survey_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
325 |
+
sky_survey_boxplots.png;A set of boxplots of the variables [].
|
326 |
+
sky_survey_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
327 |
+
sky_survey_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
328 |
+
sky_survey_histograms_numeric.png;A set of histograms of the variables [].
|
329 |
+
Wine_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
330 |
+
Wine_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
331 |
+
Wine_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
332 |
+
Wine_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
333 |
+
Wine_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
334 |
+
Wine_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
335 |
+
Wine_pca.png;A bar chart showing the explained variance ratio of 11 principal components.
|
336 |
+
Wine_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
337 |
+
Wine_boxplots.png;A set of boxplots of the variables [].
|
338 |
+
Wine_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
339 |
+
Wine_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
340 |
+
Wine_histograms_numeric.png;A set of histograms of the variables [].
|
341 |
+
water_potability_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
342 |
+
water_potability_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
343 |
+
water_potability_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
344 |
+
water_potability_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
345 |
+
water_potability_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
346 |
+
water_potability_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
347 |
+
water_potability_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
348 |
+
water_potability_pca.png;A bar chart showing the explained variance ratio of 7 principal components.
|
349 |
+
water_potability_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
350 |
+
water_potability_boxplots.png;A set of boxplots of the variables [].
|
351 |
+
water_potability_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
352 |
+
water_potability_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
353 |
+
water_potability_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
354 |
+
water_potability_histograms_numeric.png;A set of histograms of the variables [].
|
355 |
+
abalone_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
356 |
+
abalone_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
357 |
+
abalone_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
358 |
+
abalone_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
359 |
+
abalone_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
360 |
+
abalone_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
361 |
+
abalone_pca.png;A bar chart showing the explained variance ratio of 8 principal components.
|
362 |
+
abalone_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
363 |
+
abalone_boxplots.png;A set of boxplots of the variables [].
|
364 |
+
abalone_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
365 |
+
abalone_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
366 |
+
abalone_histograms_numeric.png;A set of histograms of the variables [].
|
367 |
+
smoking_drinking_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
368 |
+
smoking_drinking_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
369 |
+
smoking_drinking_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
370 |
+
smoking_drinking_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
371 |
+
smoking_drinking_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
372 |
+
smoking_drinking_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
373 |
+
smoking_drinking_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
374 |
+
smoking_drinking_pca.png;A bar chart showing the explained variance ratio of 12 principal components.
|
375 |
+
smoking_drinking_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
376 |
+
smoking_drinking_boxplots.png;A set of boxplots of the variables [].
|
377 |
+
smoking_drinking_histograms_symbolic.png;A set of bar charts of the variables [].
|
378 |
+
smoking_drinking_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
379 |
+
smoking_drinking_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
380 |
+
smoking_drinking_histograms_numeric.png;A set of histograms of the variables [].
|
381 |
+
BankNoteAuthentication_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
382 |
+
BankNoteAuthentication_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
383 |
+
BankNoteAuthentication_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
384 |
+
BankNoteAuthentication_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
385 |
+
BankNoteAuthentication_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
386 |
+
BankNoteAuthentication_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
387 |
+
BankNoteAuthentication_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
388 |
+
BankNoteAuthentication_pca.png;A bar chart showing the explained variance ratio of 4 principal components.
|
389 |
+
BankNoteAuthentication_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
390 |
+
BankNoteAuthentication_boxplots.png;A set of boxplots of the variables [].
|
391 |
+
BankNoteAuthentication_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
392 |
+
BankNoteAuthentication_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
393 |
+
BankNoteAuthentication_histograms_numeric.png;A set of histograms of the variables [].
|
394 |
+
Iris_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
395 |
+
Iris_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
396 |
+
Iris_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
397 |
+
Iris_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
398 |
+
Iris_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
399 |
+
Iris_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
400 |
+
Iris_pca.png;A bar chart showing the explained variance ratio of 4 principal components.
|
401 |
+
Iris_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
402 |
+
Iris_boxplots.png;A set of boxplots of the variables [].
|
403 |
+
Iris_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
404 |
+
Iris_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
405 |
+
Iris_histograms_numeric.png;A set of histograms of the variables [].
|
406 |
+
phone_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
407 |
+
phone_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
408 |
+
phone_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
409 |
+
phone_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
410 |
+
phone_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
411 |
+
phone_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
412 |
+
phone_pca.png;A bar chart showing the explained variance ratio of 12 principal components.
|
413 |
+
phone_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
414 |
+
phone_boxplots.png;A set of boxplots of the variables [].
|
415 |
+
phone_histograms_symbolic.png;A set of bar charts of the variables [].
|
416 |
+
phone_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
417 |
+
phone_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
418 |
+
phone_histograms_numeric.png;A set of histograms of the variables [].
|
419 |
+
Titanic_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
420 |
+
Titanic_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
421 |
+
Titanic_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
422 |
+
Titanic_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
423 |
+
Titanic_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
424 |
+
Titanic_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
425 |
+
Titanic_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
426 |
+
Titanic_pca.png;A bar chart showing the explained variance ratio of 5 principal components.
|
427 |
+
Titanic_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
428 |
+
Titanic_boxplots.png;A set of boxplots of the variables [].
|
429 |
+
Titanic_histograms_symbolic.png;A set of bar charts of the variables [].
|
430 |
+
Titanic_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
431 |
+
Titanic_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
432 |
+
Titanic_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
433 |
+
Titanic_histograms_numeric.png;A set of histograms of the variables [].
|
434 |
+
apple_quality_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
435 |
+
apple_quality_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
436 |
+
apple_quality_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
437 |
+
apple_quality_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
438 |
+
apple_quality_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
439 |
+
apple_quality_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
440 |
+
apple_quality_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
441 |
+
apple_quality_pca.png;A bar chart showing the explained variance ratio of 7 principal components.
|
442 |
+
apple_quality_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
443 |
+
apple_quality_boxplots.png;A set of boxplots of the variables [].
|
444 |
+
apple_quality_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
445 |
+
apple_quality_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
446 |
+
apple_quality_histograms_numeric.png;A set of histograms of the variables [].
|
447 |
+
Employee_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
448 |
+
Employee_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
449 |
+
Employee_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
450 |
+
Employee_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
451 |
+
Employee_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
452 |
+
Employee_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
453 |
+
Employee_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
454 |
+
Employee_pca.png;A bar chart showing the explained variance ratio of 4 principal components.
|
455 |
+
Employee_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
456 |
+
Employee_boxplots.png;A set of boxplots of the variables [].
|
457 |
+
Employee_histograms_symbolic.png;A set of bar charts of the variables [].
|
458 |
+
Employee_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
459 |
+
Employee_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
460 |
+
Employee_histograms_numeric.png;A set of histograms of the variables [].
|
desc_dataset_test.csv
ADDED
@@ -0,0 +1,16 @@
|
|
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|
|
1 |
+
Chart;description
|
2 |
+
Titanic_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
3 |
+
Titanic_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
4 |
+
Titanic_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
5 |
+
Titanic_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
6 |
+
Titanic_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
7 |
+
Titanic_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
8 |
+
Titanic_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
9 |
+
Titanic_pca.png;A bar chart showing the explained variance ratio of 5 principal components.
|
10 |
+
Titanic_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
11 |
+
Titanic_boxplots.png;A set of boxplots of the variables [].
|
12 |
+
Titanic_histograms_symbolic.png;A set of bar charts of the variables [].
|
13 |
+
Titanic_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
14 |
+
Titanic_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
15 |
+
Titanic_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
16 |
+
Titanic_histograms_numeric.png;A set of histograms of the variables [].
|
desc_dataset_train.csv
ADDED
@@ -0,0 +1,445 @@
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|
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|
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|
|
|
1 |
+
Chart;description
|
2 |
+
ObesityDataSet_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
3 |
+
ObesityDataSet_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
4 |
+
ObesityDataSet_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
5 |
+
ObesityDataSet_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
6 |
+
ObesityDataSet_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
7 |
+
ObesityDataSet_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
8 |
+
ObesityDataSet_pca.png;A bar chart showing the explained variance ratio of 8 principal components.
|
9 |
+
ObesityDataSet_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
10 |
+
ObesityDataSet_boxplots.png;A set of boxplots of the variables [].
|
11 |
+
ObesityDataSet_histograms_symbolic.png;A set of bar charts of the variables [].
|
12 |
+
ObesityDataSet_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
13 |
+
ObesityDataSet_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
14 |
+
ObesityDataSet_histograms_numeric.png;A set of histograms of the variables [].
|
15 |
+
customer_segmentation_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
16 |
+
customer_segmentation_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
17 |
+
customer_segmentation_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
18 |
+
customer_segmentation_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
19 |
+
customer_segmentation_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
20 |
+
customer_segmentation_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
21 |
+
customer_segmentation_pca.png;A bar chart showing the explained variance ratio of 3 principal components.
|
22 |
+
customer_segmentation_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
23 |
+
customer_segmentation_boxplots.png;A set of boxplots of the variables [].
|
24 |
+
customer_segmentation_histograms_symbolic.png;A set of bar charts of the variables [].
|
25 |
+
customer_segmentation_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
26 |
+
customer_segmentation_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
27 |
+
customer_segmentation_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
28 |
+
customer_segmentation_histograms_numeric.png;A set of histograms of the variables [].
|
29 |
+
urinalysis_tests_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
30 |
+
urinalysis_tests_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
31 |
+
urinalysis_tests_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
32 |
+
urinalysis_tests_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
33 |
+
urinalysis_tests_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
34 |
+
urinalysis_tests_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
35 |
+
urinalysis_tests_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
36 |
+
urinalysis_tests_pca.png;A bar chart showing the explained variance ratio of 3 principal components.
|
37 |
+
urinalysis_tests_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
38 |
+
urinalysis_tests_boxplots.png;A set of boxplots of the variables [].
|
39 |
+
urinalysis_tests_histograms_symbolic.png;A set of bar charts of the variables [].
|
40 |
+
urinalysis_tests_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
41 |
+
urinalysis_tests_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
42 |
+
urinalysis_tests_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
43 |
+
urinalysis_tests_histograms_numeric.png;A set of histograms of the variables [].
|
44 |
+
detect_dataset_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
45 |
+
detect_dataset_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
46 |
+
detect_dataset_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
47 |
+
detect_dataset_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
48 |
+
detect_dataset_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
49 |
+
detect_dataset_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
50 |
+
detect_dataset_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
51 |
+
detect_dataset_pca.png;A bar chart showing the explained variance ratio of 6 principal components.
|
52 |
+
detect_dataset_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
53 |
+
detect_dataset_boxplots.png;A set of boxplots of the variables [].
|
54 |
+
detect_dataset_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
55 |
+
detect_dataset_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
56 |
+
detect_dataset_histograms_numeric.png;A set of histograms of the variables [].
|
57 |
+
diabetes_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
58 |
+
diabetes_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
59 |
+
diabetes_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
60 |
+
diabetes_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
61 |
+
diabetes_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
62 |
+
diabetes_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
63 |
+
diabetes_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
64 |
+
diabetes_pca.png;A bar chart showing the explained variance ratio of 8 principal components.
|
65 |
+
diabetes_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
66 |
+
diabetes_boxplots.png;A set of boxplots of the variables [].
|
67 |
+
diabetes_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
68 |
+
diabetes_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
69 |
+
diabetes_histograms_numeric.png;A set of histograms of the variables [].
|
70 |
+
Placement_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
71 |
+
Placement_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
72 |
+
Placement_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
73 |
+
Placement_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
74 |
+
Placement_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
75 |
+
Placement_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
76 |
+
Placement_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
77 |
+
Placement_pca.png;A bar chart showing the explained variance ratio of 5 principal components.
|
78 |
+
Placement_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
79 |
+
Placement_boxplots.png;A set of boxplots of the variables [].
|
80 |
+
Placement_histograms_symbolic.png;A set of bar charts of the variables [].
|
81 |
+
Placement_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
82 |
+
Placement_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
83 |
+
Placement_histograms_numeric.png;A set of histograms of the variables [].
|
84 |
+
Liver_Patient_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
85 |
+
Liver_Patient_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
86 |
+
Liver_Patient_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
87 |
+
Liver_Patient_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
88 |
+
Liver_Patient_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
89 |
+
Liver_Patient_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
90 |
+
Liver_Patient_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
91 |
+
Liver_Patient_pca.png;A bar chart showing the explained variance ratio of 9 principal components.
|
92 |
+
Liver_Patient_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
93 |
+
Liver_Patient_boxplots.png;A set of boxplots of the variables [].
|
94 |
+
Liver_Patient_histograms_symbolic.png;A set of bar charts of the variables [].
|
95 |
+
Liver_Patient_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
96 |
+
Liver_Patient_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
97 |
+
Liver_Patient_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
98 |
+
Liver_Patient_histograms_numeric.png;A set of histograms of the variables [].
|
99 |
+
Hotel_Reservations_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
100 |
+
Hotel_Reservations_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
101 |
+
Hotel_Reservations_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
102 |
+
Hotel_Reservations_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
103 |
+
Hotel_Reservations_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
104 |
+
Hotel_Reservations_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
105 |
+
Hotel_Reservations_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
106 |
+
Hotel_Reservations_pca.png;A bar chart showing the explained variance ratio of 9 principal components.
|
107 |
+
Hotel_Reservations_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
108 |
+
Hotel_Reservations_boxplots.png;A set of boxplots of the variables [].
|
109 |
+
Hotel_Reservations_histograms_symbolic.png;A set of bar charts of the variables [].
|
110 |
+
Hotel_Reservations_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
111 |
+
Hotel_Reservations_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
112 |
+
Hotel_Reservations_histograms_numeric.png;A set of histograms of the variables [].
|
113 |
+
StressLevelDataset_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
114 |
+
StressLevelDataset_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
115 |
+
StressLevelDataset_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
116 |
+
StressLevelDataset_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
117 |
+
StressLevelDataset_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
118 |
+
StressLevelDataset_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
119 |
+
StressLevelDataset_pca.png;A bar chart showing the explained variance ratio of 10 principal components.
|
120 |
+
StressLevelDataset_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
121 |
+
StressLevelDataset_boxplots.png;A set of boxplots of the variables [].
|
122 |
+
StressLevelDataset_histograms_symbolic.png;A set of bar charts of the variables [].
|
123 |
+
StressLevelDataset_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
124 |
+
StressLevelDataset_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
125 |
+
StressLevelDataset_histograms_numeric.png;A set of histograms of the variables [].
|
126 |
+
WineQT_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
127 |
+
WineQT_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
128 |
+
WineQT_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
129 |
+
WineQT_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
130 |
+
WineQT_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
131 |
+
WineQT_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
132 |
+
WineQT_pca.png;A bar chart showing the explained variance ratio of 11 principal components.
|
133 |
+
WineQT_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
134 |
+
WineQT_boxplots.png;A set of boxplots of the variables [].
|
135 |
+
WineQT_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
136 |
+
WineQT_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
137 |
+
WineQT_histograms_numeric.png;A set of histograms of the variables [].
|
138 |
+
loan_data_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
139 |
+
loan_data_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
140 |
+
loan_data_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
141 |
+
loan_data_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
142 |
+
loan_data_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
143 |
+
loan_data_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
144 |
+
loan_data_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
145 |
+
loan_data_pca.png;A bar chart showing the explained variance ratio of 4 principal components.
|
146 |
+
loan_data_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
147 |
+
loan_data_boxplots.png;A set of boxplots of the variables [].
|
148 |
+
loan_data_histograms_symbolic.png;A set of bar charts of the variables [].
|
149 |
+
loan_data_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
150 |
+
loan_data_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
151 |
+
loan_data_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
152 |
+
loan_data_histograms_numeric.png;A set of histograms of the variables [].
|
153 |
+
Dry_Bean_Dataset_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
154 |
+
Dry_Bean_Dataset_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
155 |
+
Dry_Bean_Dataset_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
156 |
+
Dry_Bean_Dataset_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
157 |
+
Dry_Bean_Dataset_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
158 |
+
Dry_Bean_Dataset_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
159 |
+
Dry_Bean_Dataset_pca.png;A bar chart showing the explained variance ratio of 9 principal components.
|
160 |
+
Dry_Bean_Dataset_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
161 |
+
Dry_Bean_Dataset_boxplots.png;A set of boxplots of the variables [].
|
162 |
+
Dry_Bean_Dataset_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
163 |
+
Dry_Bean_Dataset_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
164 |
+
Dry_Bean_Dataset_histograms_numeric.png;A set of histograms of the variables [].
|
165 |
+
credit_customers_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
166 |
+
credit_customers_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
167 |
+
credit_customers_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
168 |
+
credit_customers_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
169 |
+
credit_customers_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
170 |
+
credit_customers_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
171 |
+
credit_customers_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
172 |
+
credit_customers_pca.png;A bar chart showing the explained variance ratio of 6 principal components.
|
173 |
+
credit_customers_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
174 |
+
credit_customers_boxplots.png;A set of boxplots of the variables [].
|
175 |
+
credit_customers_histograms_symbolic.png;A set of bar charts of the variables [].
|
176 |
+
credit_customers_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
177 |
+
credit_customers_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
178 |
+
credit_customers_histograms_numeric.png;A set of histograms of the variables [].
|
179 |
+
weatherAUS_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
180 |
+
weatherAUS_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
181 |
+
weatherAUS_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
182 |
+
weatherAUS_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
183 |
+
weatherAUS_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
184 |
+
weatherAUS_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
185 |
+
weatherAUS_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
186 |
+
weatherAUS_pca.png;A bar chart showing the explained variance ratio of 7 principal components.
|
187 |
+
weatherAUS_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
188 |
+
weatherAUS_boxplots.png;A set of boxplots of the variables [].
|
189 |
+
weatherAUS_histograms_symbolic.png;A set of bar charts of the variables [].
|
190 |
+
weatherAUS_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
191 |
+
weatherAUS_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
192 |
+
weatherAUS_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
193 |
+
weatherAUS_histograms_numeric.png;A set of histograms of the variables [].
|
194 |
+
car_insurance_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
195 |
+
car_insurance_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
196 |
+
car_insurance_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
197 |
+
car_insurance_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
198 |
+
car_insurance_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
199 |
+
car_insurance_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
200 |
+
car_insurance_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
201 |
+
car_insurance_pca.png;A bar chart showing the explained variance ratio of 9 principal components.
|
202 |
+
car_insurance_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
203 |
+
car_insurance_boxplots.png;A set of boxplots of the variables [].
|
204 |
+
car_insurance_histograms_symbolic.png;A set of bar charts of the variables [].
|
205 |
+
car_insurance_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
206 |
+
car_insurance_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
207 |
+
car_insurance_histograms_numeric.png;A set of histograms of the variables [].
|
208 |
+
heart_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
209 |
+
heart_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
210 |
+
heart_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
211 |
+
heart_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
212 |
+
heart_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
213 |
+
heart_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
214 |
+
heart_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
215 |
+
heart_pca.png;A bar chart showing the explained variance ratio of 10 principal components.
|
216 |
+
heart_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
217 |
+
heart_boxplots.png;A set of boxplots of the variables [].
|
218 |
+
heart_histograms_symbolic.png;A set of bar charts of the variables [].
|
219 |
+
heart_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
220 |
+
heart_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
221 |
+
heart_histograms_numeric.png;A set of histograms of the variables [].
|
222 |
+
Breast_Cancer_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
223 |
+
Breast_Cancer_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
224 |
+
Breast_Cancer_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
225 |
+
Breast_Cancer_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
226 |
+
Breast_Cancer_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
227 |
+
Breast_Cancer_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
228 |
+
Breast_Cancer_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
229 |
+
Breast_Cancer_pca.png;A bar chart showing the explained variance ratio of 10 principal components.
|
230 |
+
Breast_Cancer_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
231 |
+
Breast_Cancer_boxplots.png;A set of boxplots of the variables [].
|
232 |
+
Breast_Cancer_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
233 |
+
Breast_Cancer_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
234 |
+
Breast_Cancer_histograms_numeric.png;A set of histograms of the variables [].
|
235 |
+
e-commerce_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
236 |
+
e-commerce_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
237 |
+
e-commerce_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
238 |
+
e-commerce_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
239 |
+
e-commerce_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
240 |
+
e-commerce_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
241 |
+
e-commerce_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
242 |
+
e-commerce_pca.png;A bar chart showing the explained variance ratio of 6 principal components.
|
243 |
+
e-commerce_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
244 |
+
e-commerce_boxplots.png;A set of boxplots of the variables [].
|
245 |
+
e-commerce_histograms_symbolic.png;A set of bar charts of the variables [].
|
246 |
+
e-commerce_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
247 |
+
e-commerce_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
248 |
+
e-commerce_histograms_numeric.png;A set of histograms of the variables [].
|
249 |
+
maintenance_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
250 |
+
maintenance_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
251 |
+
maintenance_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
252 |
+
maintenance_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
253 |
+
maintenance_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
254 |
+
maintenance_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
255 |
+
maintenance_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
256 |
+
maintenance_pca.png;A bar chart showing the explained variance ratio of 5 principal components.
|
257 |
+
maintenance_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
258 |
+
maintenance_boxplots.png;A set of boxplots of the variables [].
|
259 |
+
maintenance_histograms_symbolic.png;A set of bar charts of the variables [].
|
260 |
+
maintenance_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
261 |
+
maintenance_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
262 |
+
maintenance_histograms_numeric.png;A set of histograms of the variables [].
|
263 |
+
Churn_Modelling_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
264 |
+
Churn_Modelling_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
265 |
+
Churn_Modelling_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
266 |
+
Churn_Modelling_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
267 |
+
Churn_Modelling_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
268 |
+
Churn_Modelling_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
269 |
+
Churn_Modelling_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
270 |
+
Churn_Modelling_pca.png;A bar chart showing the explained variance ratio of 6 principal components.
|
271 |
+
Churn_Modelling_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
272 |
+
Churn_Modelling_boxplots.png;A set of boxplots of the variables [].
|
273 |
+
Churn_Modelling_histograms_symbolic.png;A set of bar charts of the variables [].
|
274 |
+
Churn_Modelling_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
275 |
+
Churn_Modelling_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
276 |
+
Churn_Modelling_histograms_numeric.png;A set of histograms of the variables [].
|
277 |
+
vehicle_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
278 |
+
vehicle_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
279 |
+
vehicle_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
280 |
+
vehicle_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
281 |
+
vehicle_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
282 |
+
vehicle_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
283 |
+
vehicle_pca.png;A bar chart showing the explained variance ratio of 11 principal components.
|
284 |
+
vehicle_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
285 |
+
vehicle_boxplots.png;A set of boxplots of the variables [].
|
286 |
+
vehicle_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
287 |
+
vehicle_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
288 |
+
vehicle_histograms_numeric.png;A set of histograms of the variables [].
|
289 |
+
adult_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
290 |
+
adult_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
291 |
+
adult_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
292 |
+
adult_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
293 |
+
adult_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
294 |
+
adult_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
295 |
+
adult_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
296 |
+
adult_pca.png;A bar chart showing the explained variance ratio of 6 principal components.
|
297 |
+
adult_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
298 |
+
adult_boxplots.png;A set of boxplots of the variables [].
|
299 |
+
adult_histograms_symbolic.png;A set of bar charts of the variables [].
|
300 |
+
adult_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
301 |
+
adult_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
302 |
+
adult_histograms_numeric.png;A set of histograms of the variables [].
|
303 |
+
Covid_Data_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
304 |
+
Covid_Data_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
305 |
+
Covid_Data_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
306 |
+
Covid_Data_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
307 |
+
Covid_Data_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
308 |
+
Covid_Data_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
309 |
+
Covid_Data_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
310 |
+
Covid_Data_pca.png;A bar chart showing the explained variance ratio of 12 principal components.
|
311 |
+
Covid_Data_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
312 |
+
Covid_Data_boxplots.png;A set of boxplots of the variables [].
|
313 |
+
Covid_Data_histograms_symbolic.png;A set of bar charts of the variables [].
|
314 |
+
Covid_Data_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
315 |
+
Covid_Data_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
316 |
+
Covid_Data_histograms_numeric.png;A set of histograms of the variables [].
|
317 |
+
sky_survey_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
318 |
+
sky_survey_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
319 |
+
sky_survey_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
320 |
+
sky_survey_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
321 |
+
sky_survey_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
322 |
+
sky_survey_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
323 |
+
sky_survey_pca.png;A bar chart showing the explained variance ratio of 8 principal components.
|
324 |
+
sky_survey_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
325 |
+
sky_survey_boxplots.png;A set of boxplots of the variables [].
|
326 |
+
sky_survey_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
327 |
+
sky_survey_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
328 |
+
sky_survey_histograms_numeric.png;A set of histograms of the variables [].
|
329 |
+
Wine_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
330 |
+
Wine_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
331 |
+
Wine_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
332 |
+
Wine_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
333 |
+
Wine_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
334 |
+
Wine_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
335 |
+
Wine_pca.png;A bar chart showing the explained variance ratio of 11 principal components.
|
336 |
+
Wine_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
337 |
+
Wine_boxplots.png;A set of boxplots of the variables [].
|
338 |
+
Wine_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
339 |
+
Wine_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
340 |
+
Wine_histograms_numeric.png;A set of histograms of the variables [].
|
341 |
+
water_potability_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
342 |
+
water_potability_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
343 |
+
water_potability_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
344 |
+
water_potability_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
345 |
+
water_potability_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
346 |
+
water_potability_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
347 |
+
water_potability_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
348 |
+
water_potability_pca.png;A bar chart showing the explained variance ratio of 7 principal components.
|
349 |
+
water_potability_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
350 |
+
water_potability_boxplots.png;A set of boxplots of the variables [].
|
351 |
+
water_potability_mv.png;A bar chart showing the number of missing values per variable of the dataset. The variables that have missing values are: [].
|
352 |
+
water_potability_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
353 |
+
water_potability_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
354 |
+
water_potability_histograms_numeric.png;A set of histograms of the variables [].
|
355 |
+
abalone_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
356 |
+
abalone_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
357 |
+
abalone_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
358 |
+
abalone_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
359 |
+
abalone_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
360 |
+
abalone_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
361 |
+
abalone_pca.png;A bar chart showing the explained variance ratio of 8 principal components.
|
362 |
+
abalone_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
363 |
+
abalone_boxplots.png;A set of boxplots of the variables [].
|
364 |
+
abalone_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
365 |
+
abalone_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
366 |
+
abalone_histograms_numeric.png;A set of histograms of the variables [].
|
367 |
+
smoking_drinking_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
368 |
+
smoking_drinking_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
369 |
+
smoking_drinking_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
370 |
+
smoking_drinking_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
371 |
+
smoking_drinking_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
372 |
+
smoking_drinking_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
373 |
+
smoking_drinking_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
374 |
+
smoking_drinking_pca.png;A bar chart showing the explained variance ratio of 12 principal components.
|
375 |
+
smoking_drinking_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
376 |
+
smoking_drinking_boxplots.png;A set of boxplots of the variables [].
|
377 |
+
smoking_drinking_histograms_symbolic.png;A set of bar charts of the variables [].
|
378 |
+
smoking_drinking_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
379 |
+
smoking_drinking_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
380 |
+
smoking_drinking_histograms_numeric.png;A set of histograms of the variables [].
|
381 |
+
BankNoteAuthentication_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
382 |
+
BankNoteAuthentication_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
383 |
+
BankNoteAuthentication_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
384 |
+
BankNoteAuthentication_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
385 |
+
BankNoteAuthentication_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
386 |
+
BankNoteAuthentication_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
387 |
+
BankNoteAuthentication_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
388 |
+
BankNoteAuthentication_pca.png;A bar chart showing the explained variance ratio of 4 principal components.
|
389 |
+
BankNoteAuthentication_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
390 |
+
BankNoteAuthentication_boxplots.png;A set of boxplots of the variables [].
|
391 |
+
BankNoteAuthentication_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
392 |
+
BankNoteAuthentication_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
393 |
+
BankNoteAuthentication_histograms_numeric.png;A set of histograms of the variables [].
|
394 |
+
Iris_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
395 |
+
Iris_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
396 |
+
Iris_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
397 |
+
Iris_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
398 |
+
Iris_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
399 |
+
Iris_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
400 |
+
Iris_pca.png;A bar chart showing the explained variance ratio of 4 principal components.
|
401 |
+
Iris_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
402 |
+
Iris_boxplots.png;A set of boxplots of the variables [].
|
403 |
+
Iris_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
404 |
+
Iris_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
405 |
+
Iris_histograms_numeric.png;A set of histograms of the variables [].
|
406 |
+
phone_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
407 |
+
phone_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
408 |
+
phone_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
409 |
+
phone_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
410 |
+
phone_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
411 |
+
phone_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
412 |
+
phone_pca.png;A bar chart showing the explained variance ratio of 12 principal components.
|
413 |
+
phone_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
414 |
+
phone_boxplots.png;A set of boxplots of the variables [].
|
415 |
+
phone_histograms_symbolic.png;A set of bar charts of the variables [].
|
416 |
+
phone_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
417 |
+
phone_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
418 |
+
phone_histograms_numeric.png;A set of histograms of the variables [].
|
419 |
+
apple_quality_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
420 |
+
apple_quality_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
421 |
+
apple_quality_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
422 |
+
apple_quality_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
423 |
+
apple_quality_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
424 |
+
apple_quality_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
425 |
+
apple_quality_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
426 |
+
apple_quality_pca.png;A bar chart showing the explained variance ratio of 7 principal components.
|
427 |
+
apple_quality_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
428 |
+
apple_quality_boxplots.png;A set of boxplots of the variables [].
|
429 |
+
apple_quality_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
430 |
+
apple_quality_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
431 |
+
apple_quality_histograms_numeric.png;A set of histograms of the variables [].
|
432 |
+
Employee_decision_tree.png;An image showing a decision tree with depth = 2 where the first decision is made with variable [] and the second with variable [].
|
433 |
+
Employee_overfitting_mlp.png;A multi-line chart showing the overfitting of a mlp where the y-axis represents the accuracy and the x-axis represents the number of iterations ranging from 100 to 1000.
|
434 |
+
Employee_overfitting_gb.png;A multi-line chart showing the overfitting of gradient boosting where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
435 |
+
Employee_overfitting_rf.png;A multi-line chart showing the overfitting of random forest where the y-axis represents the accuracy and the x-axis represents the number of estimators ranging from 2 to 2002.
|
436 |
+
Employee_overfitting_knn.png;A multi-line chart showing the overfitting of k-nearest neighbors where the y-axis represents the accuracy and the x-axis represents the number of neighbors ranging from 1 to 23.
|
437 |
+
Employee_overfitting_decision_tree.png;A multi-line chart showing the overfitting of a decision tree where the y-axis represents the accuracy and the x-axis represents the max depth ranging from 2 to 25.
|
438 |
+
Employee_overfitting_dt_acc_rec.png;A multi-line chart showing the overfitting of decision tree where the y-axis represents the performance of both accuracy and recall and the x-axis represents the max depth ranging from 2 to 25.
|
439 |
+
Employee_pca.png;A bar chart showing the explained variance ratio of 4 principal components.
|
440 |
+
Employee_correlation_heatmap.png;A heatmap showing the correlation between the variables of the dataset. The variables are [].
|
441 |
+
Employee_boxplots.png;A set of boxplots of the variables [].
|
442 |
+
Employee_histograms_symbolic.png;A set of bar charts of the variables [].
|
443 |
+
Employee_class_histogram.png;A bar chart showing the distribution of the target variable [].
|
444 |
+
Employee_nr_records_nr_variables.png;A bar chart showing the number of records and variables of the dataset.
|
445 |
+
Employee_histograms_numeric.png;A set of histograms of the variables [].
|
images.tar.gz
ADDED
@@ -0,0 +1,3 @@
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|
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|
1 |
+
version https://git-lfs.github.com/spec/v1
|
2 |
+
oid sha256:266c3f093021e3e615ae69fe424dfa7d37c4b7204f7deb9c8e5364bd5acb9ca9
|
3 |
+
size 17305159
|