Smoothed Hinge Loss and 1 Support Vector Machines
Abstract
A new algorithm is presented for solving the soft-margin Support Vector Machine (SVM) optimization problem with an 1 penalty. This algorithm is designed to require a modest number of passes over the data, which is an important measure of its cost for very large data sets. The algorithm uses smoothing for the hinge-loss function, and an active set approach for the 1 penalty.
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