학술논문

An extension of the proximal point algorithm beyond convexity
Document Type
Working Paper
Source
Journal of Global Optimization, 2021
Subject
Mathematics - Optimization and Control
Mathematics - Numerical Analysis
Language
Abstract
We introduce and investigate a new generalized convexity notion for functions called prox-convexity. The proximity operator of such a function is single-valued and firmly nonexpansive. We provide examples of (strongly) quasiconvex, weakly convex, and DC (difference of convex) functions that are prox-convex, however none of these classes fully contains the one of prox-convex functions or is included into it. We show that the classical proximal point algorithm remains convergent when the convexity of the proper lower semicontinuous function to be minimized is relaxed to prox-convexity.