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arxiv: 1701.07808 · v4 · pith:3EZTRGBDnew · submitted 2017-01-26 · 📊 stat.ML · cs.LG

Linear convergence of SDCA in statistical estimation

classification 📊 stat.ML cs.LG
keywords sdcaconvexlassoassumptionconvergenceduallinearregression
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In this paper, we consider stochastic dual coordinate (SDCA) {\em without} strongly convex assumption or convex assumption. We show that SDCA converges linearly under mild conditions termed restricted strong convexity. This covers a wide array of popular statistical models including Lasso, group Lasso, and logistic regression with $\ell_1$ regularization, corrected Lasso and linear regression with SCAD regularizer. This significantly improves previous convergence results on SDCA for problems that are not strongly convex. As a by product, we derive a dual free form of SDCA that can handle general regularization term, which is of interest by itself.

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