Convergence of off-policy TD(0) with linear function approximation for reversible Markov chains
- URL: http://arxiv.org/abs/2510.25514v1
- Date: Wed, 29 Oct 2025 13:38:24 GMT
- Title: Convergence of off-policy TD(0) with linear function approximation for reversible Markov chains
- Authors: Maik Overmars, Jasper Goseling, Richard Boucherie,
- Abstract summary: We study the convergence of off-policy TD(0) with linear function approximation when used to approximate the expected discounted reward in a Markov chain.<n>Our approach is to analyse the standard algorithm, but to restrict our attention to the class of reversible Markov chains.
- Score: 0.17478203318226307
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We study the convergence of off-policy TD(0) with linear function approximation when used to approximate the expected discounted reward in a Markov chain. It is well known that the combination of off-policy learning and function approximation can lead to divergence of the algorithm. Existing results for this setting modify the algorithm, for instance by reweighing the updates using importance sampling. This establishes convergence at the expense of additional complexity. In contrast, our approach is to analyse the standard algorithm, but to restrict our attention to the class of reversible Markov chains. We demonstrate convergence under this mild reversibility condition on the structure of the chain, which in many applications can be assumed using domain knowledge. In particular, we establish a convergence guarantee under an upper bound on the discount factor in terms of the difference between the on-policy and off-policy process. This improves upon known results in the literature that state that convergence holds for a sufficiently small discount factor by establishing an explicit bound. Convergence is with probability one and achieves projected Bellman error equal to zero. To obtain these results, we adapt the stochastic approximation framework that was used by Tsitsiklis and Van Roy [1997 for the on-policy case, to the off-policy case. We illustrate our results using different types of reversible Markov chains, such as one-dimensional random walks and random walks on a weighted graph.
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