118 lines
4.0 KiB
Python
118 lines
4.0 KiB
Python
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"""
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==========================================
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Feature importances with a forest of trees
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==========================================
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This example shows the use of a forest of trees to evaluate the importance of
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features on an artificial classification task. The blue bars are the feature
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importances of the forest, along with their inter-trees variability represented
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by the error bars.
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As expected, the plot suggests that 3 features are informative, while the
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remaining are not.
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"""
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import matplotlib.pyplot as plt
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# %%
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# Data generation and model fitting
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# ---------------------------------
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# We generate a synthetic dataset with only 3 informative features. We will
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# explicitly not shuffle the dataset to ensure that the informative features
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# will correspond to the three first columns of X. In addition, we will split
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# our dataset into training and testing subsets.
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from sklearn.datasets import make_classification
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from sklearn.model_selection import train_test_split
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X, y = make_classification(
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n_samples=1000,
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n_features=10,
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n_informative=3,
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n_redundant=0,
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n_repeated=0,
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n_classes=2,
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random_state=0,
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shuffle=False,
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)
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X_train, X_test, y_train, y_test = train_test_split(X, y, stratify=y, random_state=42)
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# %%
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# A random forest classifier will be fitted to compute the feature importances.
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from sklearn.ensemble import RandomForestClassifier
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feature_names = [f"feature {i}" for i in range(X.shape[1])]
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forest = RandomForestClassifier(random_state=0)
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forest.fit(X_train, y_train)
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# %%
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# Feature importance based on mean decrease in impurity
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# -----------------------------------------------------
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# Feature importances are provided by the fitted attribute
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# `feature_importances_` and they are computed as the mean and standard
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# deviation of accumulation of the impurity decrease within each tree.
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#
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# .. warning::
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# Impurity-based feature importances can be misleading for **high
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# cardinality** features (many unique values). See
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# :ref:`permutation_importance` as an alternative below.
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import time
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import numpy as np
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start_time = time.time()
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importances = forest.feature_importances_
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std = np.std([tree.feature_importances_ for tree in forest.estimators_], axis=0)
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elapsed_time = time.time() - start_time
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print(f"Elapsed time to compute the importances: {elapsed_time:.3f} seconds")
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# %%
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# Let's plot the impurity-based importance.
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import pandas as pd
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forest_importances = pd.Series(importances, index=feature_names)
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fig, ax = plt.subplots()
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forest_importances.plot.bar(yerr=std, ax=ax)
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ax.set_title("Feature importances using MDI")
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ax.set_ylabel("Mean decrease in impurity")
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fig.tight_layout()
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# %%
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# We observe that, as expected, the three first features are found important.
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#
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# Feature importance based on feature permutation
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# -----------------------------------------------
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# Permutation feature importance overcomes limitations of the impurity-based
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# feature importance: they do not have a bias toward high-cardinality features
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# and can be computed on a left-out test set.
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from sklearn.inspection import permutation_importance
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start_time = time.time()
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result = permutation_importance(
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forest, X_test, y_test, n_repeats=10, random_state=42, n_jobs=2
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)
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elapsed_time = time.time() - start_time
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print(f"Elapsed time to compute the importances: {elapsed_time:.3f} seconds")
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forest_importances = pd.Series(result.importances_mean, index=feature_names)
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# %%
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# The computation for full permutation importance is more costly. Features are
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# shuffled n times and the model refitted to estimate the importance of it.
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# Please see :ref:`permutation_importance` for more details. We can now plot
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# the importance ranking.
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fig, ax = plt.subplots()
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forest_importances.plot.bar(yerr=result.importances_std, ax=ax)
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ax.set_title("Feature importances using permutation on full model")
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ax.set_ylabel("Mean accuracy decrease")
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fig.tight_layout()
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plt.show()
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# %%
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# The same features are detected as most important using both methods. Although
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# the relative importances vary. As seen on the plots, MDI is less likely than
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# permutation importance to fully omit a feature.
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