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arxiv: 1804.09629 · v1 · pith:XYHFDSS2new · submitted 2018-04-25 · 📊 stat.ML · cs.LG· math.OC

Convergence guarantees for a class of non-convex and non-smooth optimization problems

classification 📊 stat.ML cs.LGmath.OC
keywords functionsproblemsclassconvergencemethodsnon-smoothalgorithmcccp
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We consider the problem of finding critical points of functions that are non-convex and non-smooth. Studying a fairly broad class of such problems, we analyze the behavior of three gradient-based methods (gradient descent, proximal update, and Frank-Wolfe update). For each of these methods, we establish rates of convergence for general problems, and also prove faster rates for continuous sub-analytic functions. We also show that our algorithms can escape strict saddle points for a class of non-smooth functions, thereby generalizing known results for smooth functions. Our analysis leads to a simplification of the popular CCCP algorithm, used for optimizing functions that can be written as a difference of two convex functions. Our simplified algorithm retains all the convergence properties of CCCP, along with a significantly lower cost per iteration. We illustrate our methods and theory via applications to the problems of best subset selection, robust estimation, mixture density estimation, and shape-from-shading reconstruction.

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