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Artificial Intelligence And Data Science PDF Available Non-peer-reviewed Preprint

Distributed Mini-Batch SDCA

Martin Takac, Peter Richtarik, Nathan Srebro  ·  Published 2015-07-29

Abstract

We present an improved analysis of mini-batched stochastic dual coordinate ascent for regularized empirical loss minimization (i.e. SVM and SVM-type objectives). Our analysis allows for flexible sampling schemes, including where data is distribute across machines, and combines a dependence on the smoothness of the loss and/or the data spread (measured through the spectral norm).
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