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arxiv: 1210.1960 · v1 · pith:IPAFMZHWnew · submitted 2012-10-06 · 📊 stat.ML · cs.LG

Feature Selection via L1-Penalized Squared-Loss Mutual Information

classification 📊 stat.ML cs.LG
keywords featurefeaturesinteractionselectioninformationl1-lsmimutualredundancy
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Feature selection is a technique to screen out less important features. Many existing supervised feature selection algorithms use redundancy and relevancy as the main criteria to select features. However, feature interaction, potentially a key characteristic in real-world problems, has not received much attention. As an attempt to take feature interaction into account, we propose L1-LSMI, an L1-regularization based algorithm that maximizes a squared-loss variant of mutual information between selected features and outputs. Numerical results show that L1-LSMI performs well in handling redundancy, detecting non-linear dependency, and considering feature interaction.

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