Non-convex Regularizations for Feature Selection in Ranking With Sparse SVM
Abstract
Feature selection in learning to rank has recently emerged as a crucial issue. Whereas several preprocessing approaches have been proposed, only a few works have been focused on integrating the feature selection into the learning process. In this work, we propose a general framework for feature selection in learning to rank using SVM with a sparse regularization term. We investigate both classical convex regularizations such as \1 or weighted \1 and non-convex regularization terms such as log penalty, Minimax Concave Penalty (MCP) or \p pseudo norm with p1. Two algorithms are proposed, first an accelerated proximal approach for solving the convex problems, second a reweighted \1 scheme to address the non-convex regularizations. We conduct intensive experiments on nine datasets from Letor 3.0 and Letor 4.0 corpora. Numerical results show that the use of non-convex regularizations we propose leads to more sparsity in the resulting models while prediction performance is preserved. The number of features is decreased by up to a factor of six compared to the \1 regularization. In addition, the software is publicly available on the web.
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