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Univariate Feature Selection

An example showing univariate feature selection.

Noisy (non informative) features are added to the iris data and univariate feature selection is applied. For each feature, we plot the p-values for the univariate feature selection and the corresponding weights of an SVM. We can see that univariate feature selection selects the informative features and that these have larger SVM weights.

In the total set of features, only the 4 first ones are significant. We can see that they have the highest score with univariate feature selection. The SVM attributes small weights to these features, but these weight are non zero. Applying univariate feature selection before the SVM increases the SVM weight attributed to the significant features, and will thus improve classification.

../_images/plot_feature_selection_1.png

Python source code: plot_feature_selection.py

print __doc__

import numpy as np
import pylab as pl

################################################################################
# import some data to play with

# The IRIS dataset
from sklearn import datasets, svm
iris = datasets.load_iris()

# Some noisy data not correlated
E = np.random.normal(size=(len(iris.data), 35))

# Add the noisy data to the informative features
x = np.hstack((iris.data, E))
y = iris.target

################################################################################
pl.figure(1)
pl.clf()

x_indices = np.arange(x.shape[-1])

################################################################################
# Univariate feature selection
from sklearn.feature_selection import SelectFpr, f_classif
# As a scoring function, we use a F test for classification
# We use the default selection function: the 10% most significant
# features

selector = SelectFpr(f_classif, alpha=0.1)
selector.fit(x, y)
scores = -np.log10(selector._pvalues)
scores /= scores.max()
pl.bar(x_indices-.45, scores, width=.3,
        label=r'Univariate score ($-Log(p_{value})$)',
        color='g')

################################################################################
# Compare to the weights of an SVM
clf = svm.SVC(kernel='linear')
clf.fit(x, y)

svm_weights = (clf.coef_**2).sum(axis=0)
svm_weights /= svm_weights.max()
pl.bar(x_indices-.15, svm_weights, width=.3, label='SVM weight',
        color='r')


# ################################################################################
# # Now fit an SVM with added feature selection
# selector = univ_selection.Univ(
#                 score_func=univ_selection.f_classif)

# selector.fit(x, clf.predict(x))
# svm_weights = (clf.support_**2).sum(axis=0)
# svm_weights /= svm_weights.max()
# full_svm_weights = np.zeros(selector.support_.shape)
# full_svm_weights[selector.support_] = svm_weights
# pl.bar(x_indices+.15, full_svm_weights, width=.3,
#         label='SVM weight after univariate selection',
#         color='b')

pl.title("Comparing feature selection")
pl.xlabel('Feature number')
pl.yticks(())
pl.axis('tight')
pl.legend(loc='upper right')
pl.show()