Variable Smoothing for Weakly Convex Composite Functions

Abstract

We study minimization of a structured objective function, being the sum of a smooth function and a composition of a weakly convex function with a linear operator. Applications include image reconstruction problems with regularizers that introduce less bias than the standard convex regularizers. We develop a variable smoothing algorithm, based on the Moreau envelope with a decreasing sequence of smoothing parameters, and prove a complexity of O(ε-3) to achieve an ε-approximate solution. This bound interpolates between the O(ε-2) bound for the smooth case and the O(ε-4) bound for the subgradient method. Our complexity bound is in line with other works that deal with structured nonsmoothness of weakly convex functions.

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