A primal-dual perspective for distributed TD-learning
Abstract
The goal of this paper is to investigate distributed temporal difference (TD) learning for a networked multi-agent Markov decision process. The proposed approach is based on distributed optimization algorithms, which can be interpreted as primal-dual Ordinary differential equation (ODE) dynamics subject to null-space constraints. Based on the exponential convergence behavior of the primal-dual ODE dynamics subject to null-space constraints, we examine the behavior of the final iterate in various distributed TD-learning scenarios, considering both constant and diminishing step-sizes and incorporating both i.i.d. and Markovian observation models. Unlike existing methods, the proposed algorithm does not require the assumption that the underlying communication network structure is characterized by a doubly stochastic matrix.
Cite
@article{arxiv.2310.00638,
title = {A primal-dual perspective for distributed TD-learning},
author = {Han-Dong Lim and Donghwan Lee},
journal= {arXiv preprint arXiv:2310.00638},
year = {2025}
}
Comments
To appear in IJCAI2025