A dual coordinate descent method for large-scale linear SVM

Cho‐Jui Hsieh(National Taiwan University), Kai‐Wei Chang(National Taiwan University), Chih‐Jen Lin(National Taiwan University), S. Sathiya Keerthi(Yahoo (United States)), S. Sundararajan
Unknown
January 1, 2008
Cited by 914

Abstract

In many applications, data appear with a huge number of instances as well as features. Linear Support Vector Machines (SVM) is one of the most popular tools to deal with such large-scale sparse data. This paper presents a novel dual coordinate descent method for linear SVM with L1-and L2-loss functions. The proposed method is simple and reaches an ε-accurate solution in O(log(1/ε)) iterations. Experiments indicate that our method is much faster than state of the art solvers such as Pegasos, TRON, SVMperf, and a recent primal coordinate descent implementation.


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