학술논문

Stochastic fixed-point iterations for nonexpansive maps: Convergence and error bounds
Document Type
Working Paper
Source
Subject
Mathematics - Optimization and Control
47H09, 47H10, 47J26, 62L20, 65Kxx, 68Q25
Language
Abstract
We study a stochastically perturbed version of the well-known Krasnoselski--Mann iteration for computing fixed points of nonexpansive maps in finite dimensional normed spaces. We discuss sufficient conditions on the stochastic noise and stepsizes that guarantee almost sure convergence of the iterates towards a fixed point, and derive non-asymptotic error bounds and convergence rates for the fixed-point residuals. Our main results concern the case of a martingale difference noise with variances that can possibly grow unbounded. This supports an application to reinforcement learning for average reward Markov decision processes, for which we establish convergence and asymptotic rates. We also analyze in depth the case where the noise has uniformly bounded variance, obtaining error bounds with explicit computable constants.
Comment: Second revision with applications to RVI-Q-learning and SGD