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arxiv: 1611.04149 · v1 · pith:EHMY6IGDnew · submitted 2016-11-13 · 📊 stat.ML · cs.LG

Accelerated Variance Reduced Block Coordinate Descent

classification 📊 stat.ML cs.LG
keywords dataemphacceleratedalgorithmsconvergencelargenumberaccess
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Algorithms with fast convergence, small number of data access, and low per-iteration complexity are particularly favorable in the big data era, due to the demand for obtaining \emph{highly accurate solutions} to problems with \emph{a large number of samples} in \emph{ultra-high} dimensional space. Existing algorithms lack at least one of these qualities, and thus are inefficient in handling such big data challenge. In this paper, we propose a method enjoying all these merits with an accelerated convergence rate $O(\frac{1}{k^2})$. Empirical studies on large scale datasets with more than one million features are conducted to show the effectiveness of our methods in practice.

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