Filter: Select the p-values for an estimated false discovery rate
This uses the Benjamini-Hochberg procedure. ``alpha`` is an upper bound on the expected false discovery rate.
Read more in the :ref:`User Guide <univariate_feature_selection>`.
Parameters ---------- score_func : callable Function taking two arrays X and y, and returning a pair of arrays (scores, pvalues). Default is f_classif (see below 'See also'). The default function only works with classification tasks.
alpha : float, optional The highest uncorrected p-value for features to keep.
Examples -------- >>> from sklearn.datasets import load_breast_cancer >>> from sklearn.feature_selection import SelectFdr, chi2 >>> X, y = load_breast_cancer(return_X_y=True) >>> X.shape (569, 30) >>> X_new = SelectFdr(chi2, alpha=0.01).fit_transform(X, y) >>> X_new.shape (569, 16)
Attributes ---------- scores_ : array-like of shape (n_features,) Scores of features.
pvalues_ : array-like of shape (n_features,) p-values of feature scores.
References ---------- https://en.wikipedia.org/wiki/False_discovery_rate
See also -------- f_classif: ANOVA F-value between label/feature for classification tasks. mutual_info_classif: Mutual information for a discrete target. chi2: Chi-squared stats of non-negative features for classification tasks. f_regression: F-value between label/feature for regression tasks. mutual_info_regression: Mutual information for a contnuous target. SelectPercentile: Select features based on percentile of the highest scores. SelectKBest: Select features based on the k highest scores. SelectFpr: Select features based on a false positive rate test. SelectFwe: Select features based on family-wise error rate. GenericUnivariateSelect: Univariate feature selector with configurable mode.