Article ID Journal Published Year Pages File Type
6870515 Computational Statistics & Data Analysis 2014 16 Pages PDF
Abstract
The sparse group lasso optimization problem is solved using a coordinate gradient descent algorithm. The algorithm is applicable to a broad class of convex loss functions. Convergence of the algorithm is established, and the algorithm is used to investigate the performance of the multinomial sparse group lasso classifier. On three different real data examples the multinomial group lasso clearly outperforms multinomial lasso in terms of achieved classification error rate and in terms of including fewer features for the classification. An implementation of the multinomial sparse group lasso algorithm is available in the R package msgl. Its performance scales well with the problem size as illustrated by one of the examples considered-a 50 class classification problem with 10 k features, which amounts to estimating 500 k parameters.
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Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
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