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arxiv:2512.03023

Asymptotic Analysis of Stochastic Splitting Methods for Multivariate Monotone Inclusions

Published on Dec 2
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Abstract

A framework is proposed to analyze the convergence of stochastic monotone operator splitting methods in Hilbert spaces, with applications to proximal point and randomized block-iterative projective splitting algorithms.

AI-generated summary

We propose an abstract framework to establish the convergence of the iterates of stochastic versions of a broad range of monotone operator splitting methods in Hilbert spaces. This framework allows for the introduction of stochasticity at several levels: approximation of operators, selection of coordinates and operators in block-iterative implementations, and relaxation parameters. The proposed analysis involves a reduced inclusion model with two operators. At each iteration, stochastic approximations to points in the graphs of these two operators are used to form the update. The results are applied to derive the almost sure and L^2 convergence of stochastic versions of the proximal point algorithm, as well as of randomized block-iterative projective splitting methods for solving systems of coupled inclusions involving a mix of set-valued, cocoercive, and Lipschitzian monotone operators combined via various monotonicity-preserving operations.

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