eduvedras commited on
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1 Parent(s): feb68a4

New dataset

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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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+
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+ # Lint as: python3
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+ """Image Description Dataset."""
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+
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+
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+ import json
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+
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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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+
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+
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+ logger = datasets.logging.get_logger(__name__)
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+
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+
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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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+
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+ _DESCRIPTION = """\
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+ Image descriptions for data science charts
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+ """
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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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+
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+ class Image_DescriptionTargz(datasets.GeneratorBasedBuilder):
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+
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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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+
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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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+
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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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+
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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
desc_dataset.csv ADDED
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+ Chart;description
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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.
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
+ 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 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
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 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
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 @@
 
 
 
 
1
+ version https://git-lfs.github.com/spec/v1
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