In-sample Model Selection for Trimmed Hinge Loss Support Vector Machine

作者:Davide Anguita, Alessandro Ghio, Luca Oneto, Sandro Ridella

摘要

In this letter, we target the problem of model selection for support vector classifiers through in-sample methods, which are particularly appealing in the small-sample regime. In particular, we describe the application of a trimmed hinge loss function to the Rademacher complexity and maximal discrepancy-based in-sample approaches and show that the selected classifiers outperform the ones obtained with other in-sample model selection techniques, which exploit a soft loss function, in classifying microarray data.

论文关键词:Support vector machine, Model selection, Rademacher complexity, Maximal discrepancy, Convex–concave programming

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论文官网地址:https://doi.org/10.1007/s11063-012-9235-z