Distribution-free tests for lossless feature selection in classification and regression
Abstract
We study the problem of lossless feature selection for a d-dimensional feature vector X=(X(1),… ,X(d)) and label Y for binary classification as well as nonparametric regression. For an index set S⊂ \1,… ,d\, consider the selected |S|-dimensional feature subvector XS=(X(i), i∈ S). If L* and L*(S) stand for the minimum risk based on X and XS, respectively, then XS is called lossless if L*=L*(S). For classification, the minimum risk is the Bayes error probability, while in regression, the minimum risk is the residual variance. We introduce nearest-neighbor based test statistics to test the hypothesis that XS is lossless. This test statistic is an estimate of the excess risk L*(S)-L*. Surprisingly, estimating this excess risk turns out to be a functional estimation problem that does not suffer from the curse of dimensionality in the sense that the convergence rate does not depend on the dimension d. For the threshold an= n/n, the corresponding tests are proved to be consistent under conditions on the distribution of (X,Y) that are significantly milder than in previous work. Also, our threshold is universal (dimension independent), in contrast to earlier methods where for large d the threshold becomes too large to be useful in practice.
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