LGNov 24, 2021

Finite-Time Error Bounds for Distributed Linear Stochastic Approximation

arXiv:2111.12665v21 citations
Originality Incremental advance
AI Analysis

This addresses a gap in distributed optimization for multi-agent systems with limited communication constraints, though it appears incremental relative to prior work on doubly stochastic matrices.

The paper tackles the problem of distributed linear stochastic approximation with stochastic (not necessarily doubly stochastic) consensus matrices, deriving finite-time mean-square error bounds for both constant and time-varying step-sizes, and proposes a push-sum-type algorithm for cases requiring averaging with uni-directional interactions.

This paper considers a novel multi-agent linear stochastic approximation algorithm driven by Markovian noise and general consensus-type interaction, in which each agent evolves according to its local stochastic approximation process which depends on the information from its neighbors. The interconnection structure among the agents is described by a time-varying directed graph. While the convergence of consensus-based stochastic approximation algorithms when the interconnection among the agents is described by doubly stochastic matrices (at least in expectation) has been studied, less is known about the case when the interconnection matrix is simply stochastic. For any uniformly strongly connected graph sequences whose associated interaction matrices are stochastic, the paper derives finite-time bounds on the mean-square error, defined as the deviation of the output of the algorithm from the unique equilibrium point of the associated ordinary differential equation. For the case of interconnection matrices being stochastic, the equilibrium point can be any unspecified convex combination of the local equilibria of all the agents in the absence of communication. Both the cases with constant and time-varying step-sizes are considered. In the case when the convex combination is required to be a straight average and interaction between any pair of neighboring agents may be uni-directional, so that doubly stochastic matrices cannot be implemented in a distributed manner, the paper proposes a push-sum-type distributed stochastic approximation algorithm and provides its finite-time bound for the time-varying step-size case by leveraging the analysis for the consensus-type algorithm with stochastic matrices and developing novel properties of the push-sum algorithm. Distributed temporal difference learning is discussed as an illustrative application.

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