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arxiv: 1807.00255 · v1 · pith:RVLGJWWUnew · submitted 2018-07-01 · 🧮 math.OC · cs.LG

Stochastic model-based minimization under high-order growth

classification 🧮 math.OC cs.LG
keywords stochasticalgorithmsconvexityfunctionminimizationmodelspointrate
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Given a nonsmooth, nonconvex minimization problem, we consider algorithms that iteratively sample and minimize stochastic convex models of the objective function. Assuming that the one-sided approximation quality and the variation of the models is controlled by a Bregman divergence, we show that the scheme drives a natural stationarity measure to zero at the rate $O(k^{-1/4})$. Under additional convexity and relative strong convexity assumptions, the function values converge to the minimum at the rate of $O(k^{-1/2})$ and $\widetilde{O}(k^{-1})$, respectively. We discuss consequences for stochastic proximal point, mirror descent, regularized Gauss-Newton, and saddle point algorithms.

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