mirror of
https://github.com/Doctorado-ML/STree.git
synced 2025-08-17 16:36:01 +00:00
Compare commits
6 Commits
Author | SHA1 | Date | |
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93be8a89a8 | ||
82838fa3e0
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f0b2ce3c7b
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00ed57c015
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08222f109e | ||
cc931d8547
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2
.github/workflows/main.yml
vendored
2
.github/workflows/main.yml
vendored
@@ -12,7 +12,7 @@ jobs:
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runs-on: ${{ matrix.os }}
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strategy:
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matrix:
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os: [macos-latest, ubuntu-latest]
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os: [macos-latest, ubuntu-latest, windows-latest]
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python: [3.8]
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steps:
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@@ -11,7 +11,7 @@ authors:
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given-names: "José M."
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orcid: "https://orcid.org/0000-0002-9164-5191"
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title: "STree"
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version: 1.0.2
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version: 1.2.3
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doi: 10.5281/zenodo.5504083
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date-released: 2021-11-02
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url: "https://github.com/Doctorado-ML/STree"
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6
Makefile
6
Makefile
@@ -10,6 +10,9 @@ coverage: ## Run tests with coverage
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deps: ## Install dependencies
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pip install -r requirements.txt
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devdeps: ## Install development dependencies
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pip install black pip-audit flake8 mypy coverage
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lint: ## Lint and static-check
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black stree
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flake8 stree
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@@ -32,6 +35,9 @@ build: ## Build package
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doc-clean: ## Update documentation
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make -C docs --makefile=Makefile clean
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audit: ## Audit pip
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pip-audit
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help: ## Show help message
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@IFS=$$'\n' ; \
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help_lines=(`fgrep -h "##" $(MAKEFILE_LIST) | fgrep -v fgrep | sed -e 's/\\$$//' | sed -e 's/##/:/'`); \
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4
setup.py
4
setup.py
@@ -1,4 +1,5 @@
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import setuptools
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import os
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def readme():
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@@ -8,7 +9,8 @@ def readme():
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def get_data(field):
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item = ""
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with open("stree/__init__.py") as f:
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file_name = "_version.py" if field == "version" else "__init__.py"
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with open(os.path.join("stree", file_name)) as f:
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for line in f.readlines():
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if line.startswith(f"__{field}__"):
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delim = '"' if '"' in line else "'"
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@@ -145,6 +145,28 @@ class Snode:
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except IndexError:
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self._class = None
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def graph(self):
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"""
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Return a string representing the node in graphviz format
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"""
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output = ""
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count_values = np.unique(self._y, return_counts=True)
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if self.is_leaf():
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output += (
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f'N{id(self)} [shape=box style=filled label="'
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f"class={self._class} impurity={self._impurity:.3f} "
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f'classes={count_values[0]} samples={count_values[1]}"];\n'
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)
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else:
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output += (
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f'N{id(self)} [label="#features={len(self._features)} '
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f"classes={count_values[0]} samples={count_values[1]} "
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f'({sum(count_values[1])})" fontcolor=black];\n'
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)
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output += f"N{id(self)} -> N{id(self.get_up())} [color=black];\n"
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output += f"N{id(self)} -> N{id(self.get_down())} [color=black];\n"
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return output
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def __str__(self) -> str:
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count_values = np.unique(self._y, return_counts=True)
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if self.is_leaf():
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@@ -367,9 +389,8 @@ class Splitter:
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.get_support(indices=True)
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)
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@staticmethod
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def _fs_mutual(
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dataset: np.array, labels: np.array, max_features: int
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self, dataset: np.array, labels: np.array, max_features: int
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) -> tuple:
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"""Return the best features with mutual information with labels
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@@ -389,7 +410,9 @@ class Splitter:
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indices of the features selected
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"""
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# return best features with mutual info with the label
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feature_list = mutual_info_classif(dataset, labels)
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feature_list = mutual_info_classif(
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dataset, labels, random_state=self._random_state
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)
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return tuple(
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sorted(
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range(len(feature_list)), key=lambda sub: feature_list[sub]
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@@ -17,6 +17,7 @@ from sklearn.utils.validation import (
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_check_sample_weight,
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)
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from .Splitter import Splitter, Snode, Siterator
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from ._version import __version__
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class Stree(BaseEstimator, ClassifierMixin):
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@@ -169,6 +170,11 @@ class Stree(BaseEstimator, ClassifierMixin):
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self.normalize = normalize
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self.multiclass_strategy = multiclass_strategy
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@staticmethod
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def version() -> str:
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"""Return the version of the package."""
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return __version__
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def _more_tags(self) -> dict:
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"""Required by sklearn to supply features of the classifier
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make mandatory the labels array
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@@ -470,6 +476,23 @@ class Stree(BaseEstimator, ClassifierMixin):
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tree = None
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return Siterator(tree)
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def graph(self, title="") -> str:
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"""Graphviz code representing the tree
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Returns
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-------
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str
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graphviz code
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"""
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output = (
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"digraph STree {\nlabel=<STree "
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f"{title}>\nfontsize=30\nfontcolor=blue\nlabelloc=t\n"
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)
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for node in self:
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output += node.graph()
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output += "}\n"
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return output
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def __str__(self) -> str:
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"""String representation of the tree
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@@ -1,7 +1,5 @@
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from .Strees import Stree, Siterator
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__version__ = "1.2.2"
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__author__ = "Ricardo Montañana Gómez"
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__copyright__ = "Copyright 2020-2021, Ricardo Montañana Gómez"
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__license__ = "MIT License"
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1
stree/_version.py
Normal file
1
stree/_version.py
Normal file
@@ -0,0 +1 @@
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__version__ = "1.2.4"
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@@ -10,6 +10,7 @@ from sklearn.svm import LinearSVC
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from stree import Stree
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from stree.Splitter import Snode
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from .utils import load_dataset
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from .._version import __version__
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class Stree_test(unittest.TestCase):
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@@ -357,6 +358,7 @@ class Stree_test(unittest.TestCase):
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# Tests of score
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def test_score_binary(self):
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"""Check score for binary classification."""
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X, y = load_dataset(self._random_state)
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accuracies = [
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0.9506666666666667,
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@@ -379,6 +381,7 @@ class Stree_test(unittest.TestCase):
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self.assertAlmostEqual(accuracy_expected, accuracy_score)
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def test_score_max_features(self):
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"""Check score using max_features."""
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X, y = load_dataset(self._random_state)
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clf = Stree(
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kernel="liblinear",
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@@ -390,6 +393,7 @@ class Stree_test(unittest.TestCase):
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self.assertAlmostEqual(0.9453333333333334, clf.score(X, y))
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def test_bogus_splitter_parameter(self):
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"""Check that bogus splitter parameter raises exception."""
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clf = Stree(splitter="duck")
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with self.assertRaises(ValueError):
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clf.fit(*load_dataset())
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@@ -445,6 +449,7 @@ class Stree_test(unittest.TestCase):
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self.assertListEqual([47], resdn[1].tolist())
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def test_score_multiclass_rbf(self):
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"""Test score for multiclass classification with rbf kernel."""
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X, y = load_dataset(
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random_state=self._random_state,
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n_classes=3,
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@@ -462,6 +467,7 @@ class Stree_test(unittest.TestCase):
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self.assertEqual(1.0, clf2.fit(X, y).score(X, y))
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def test_score_multiclass_poly(self):
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"""Test score for multiclass classification with poly kernel."""
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X, y = load_dataset(
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random_state=self._random_state,
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n_classes=3,
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@@ -483,6 +489,7 @@ class Stree_test(unittest.TestCase):
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self.assertEqual(1.0, clf2.fit(X, y).score(X, y))
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def test_score_multiclass_liblinear(self):
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"""Test score for multiclass classification with liblinear kernel."""
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X, y = load_dataset(
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random_state=self._random_state,
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n_classes=3,
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@@ -508,6 +515,7 @@ class Stree_test(unittest.TestCase):
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self.assertEqual(1.0, clf2.fit(X, y).score(X, y))
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def test_score_multiclass_sigmoid(self):
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"""Test score for multiclass classification with sigmoid kernel."""
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X, y = load_dataset(
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random_state=self._random_state,
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n_classes=3,
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@@ -528,6 +536,7 @@ class Stree_test(unittest.TestCase):
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self.assertEqual(0.9662921348314607, clf2.fit(X, y).score(X, y))
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def test_score_multiclass_linear(self):
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"""Test score for multiclass classification with linear kernel."""
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warnings.filterwarnings("ignore", category=ConvergenceWarning)
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warnings.filterwarnings("ignore", category=RuntimeWarning)
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X, y = load_dataset(
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@@ -555,11 +564,13 @@ class Stree_test(unittest.TestCase):
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self.assertEqual(1.0, clf2.fit(X, y).score(X, y))
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def test_zero_all_sample_weights(self):
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"""Test exception raises when all sample weights are zero."""
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X, y = load_dataset(self._random_state)
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with self.assertRaises(ValueError):
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Stree().fit(X, y, np.zeros(len(y)))
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def test_mask_samples_weighted_zero(self):
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"""Check that the weighted zero samples are masked."""
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X = np.array(
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[
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[1, 1],
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@@ -587,6 +598,7 @@ class Stree_test(unittest.TestCase):
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self.assertEqual(model2.score(X, y, w), 1)
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def test_depth(self):
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"""Check depth of the tree."""
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X, y = load_dataset(
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random_state=self._random_state,
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n_classes=3,
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@@ -602,6 +614,7 @@ class Stree_test(unittest.TestCase):
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self.assertEqual(4, clf.depth_)
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def test_nodes_leaves(self):
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"""Check number of nodes and leaves."""
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X, y = load_dataset(
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random_state=self._random_state,
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n_classes=3,
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@@ -621,6 +634,7 @@ class Stree_test(unittest.TestCase):
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self.assertEqual(6, leaves)
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def test_nodes_leaves_artificial(self):
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"""Check leaves of artificial dataset."""
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n1 = Snode(None, [1, 2, 3, 4], [1, 0, 1, 1], [], 0.0, "test1")
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n2 = Snode(None, [1, 2, 3, 4], [1, 0, 1, 1], [], 0.0, "test2")
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n3 = Snode(None, [1, 2, 3, 4], [1, 0, 1, 1], [], 0.0, "test3")
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@@ -639,12 +653,14 @@ class Stree_test(unittest.TestCase):
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self.assertEqual(2, leaves)
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def test_bogus_multiclass_strategy(self):
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"""Check invalid multiclass strategy."""
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clf = Stree(multiclass_strategy="other")
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X, y = load_wine(return_X_y=True)
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with self.assertRaises(ValueError):
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clf.fit(X, y)
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def test_multiclass_strategy(self):
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"""Check multiclass strategy."""
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X, y = load_wine(return_X_y=True)
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clf_o = Stree(multiclass_strategy="ovo")
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clf_r = Stree(multiclass_strategy="ovr")
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@@ -654,6 +670,7 @@ class Stree_test(unittest.TestCase):
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self.assertEqual(0.9269662921348315, score_r)
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def test_incompatible_hyperparameters(self):
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"""Check incompatible hyperparameters."""
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X, y = load_wine(return_X_y=True)
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clf = Stree(kernel="liblinear", multiclass_strategy="ovo")
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with self.assertRaises(ValueError):
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@@ -661,3 +678,50 @@ class Stree_test(unittest.TestCase):
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clf = Stree(multiclass_strategy="ovo", split_criteria="max_samples")
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with self.assertRaises(ValueError):
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clf.fit(X, y)
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def test_version(self):
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"""Check STree version."""
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clf = Stree()
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self.assertEqual(__version__, clf.version())
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def test_graph(self):
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"""Check graphviz representation of the tree."""
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X, y = load_wine(return_X_y=True)
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clf = Stree(random_state=self._random_state)
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expected_head = (
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"digraph STree {\nlabel=<STree >\nfontsize=30\n"
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"fontcolor=blue\nlabelloc=t\n"
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)
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expected_tail = (
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' [shape=box style=filled label="class=1 impurity=0.000 '
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'classes=[1] samples=[1]"];\n}\n'
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)
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self.assertEqual(clf.graph(), expected_head + "}\n")
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clf.fit(X, y)
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computed = clf.graph()
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computed_head = computed[: len(expected_head)]
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num = -len(expected_tail)
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computed_tail = computed[num:]
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self.assertEqual(computed_head, expected_head)
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self.assertEqual(computed_tail, expected_tail)
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def test_graph_title(self):
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X, y = load_wine(return_X_y=True)
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clf = Stree(random_state=self._random_state)
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expected_head = (
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"digraph STree {\nlabel=<STree Sample title>\nfontsize=30\n"
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"fontcolor=blue\nlabelloc=t\n"
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)
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expected_tail = (
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' [shape=box style=filled label="class=1 impurity=0.000 '
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'classes=[1] samples=[1]"];\n}\n'
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)
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self.assertEqual(clf.graph("Sample title"), expected_head + "}\n")
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clf.fit(X, y)
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computed = clf.graph("Sample title")
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computed_head = computed[: len(expected_head)]
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num = -len(expected_tail)
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computed_tail = computed[num:]
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self.assertEqual(computed_head, expected_head)
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self.assertEqual(computed_tail, expected_tail)
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|
Reference in New Issue
Block a user