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Scaling Up Sparse Support Vector Machines by Simultaneous Feature and Sample Reduction

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arxiv 1607.06996 v6 pith:KKS3MYI5 submitted 2016-07-24 stat.ML cs.LG

Scaling Up Sparse Support Vector Machines by Simultaneous Feature and Sample Reduction

classification stat.ML cs.LG
keywords sparsesvmsfeaturessupportapproachfeaturemethodsample
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Sparse support vector machine (SVM) is a popular classification technique that can simultaneously learn a small set of the most interpretable features and identify the support vectors. It has achieved great successes in many real-world applications. However, for large-scale problems involving a huge number of samples and ultra-high dimensional features, solving sparse SVMs remains challenging. By noting that sparse SVMs induce sparsities in both feature and sample spaces, we propose a novel approach, which is based on accurate estimations of the primal and dual optima of sparse SVMs, to simultaneously identify the inactive features and samples that are guaranteed to be irrelevant to the outputs. Thus, we can remove the identified inactive samples and features from the training phase, leading to substantial savings in the computational cost without sacrificing the accuracy. Moreover, we show that our method can be extended to multi-class sparse support vector machines. To the best of our knowledge, the proposed method is the \emph{first} \emph{static} feature and sample reduction method for sparse SVMs and multi-class sparse SVMs. Experiments on both synthetic and real data sets demonstrate that our approach significantly outperforms state-of-the-art methods and the speedup gained by our approach can be orders of magnitude.

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