On the Performance of Temporal Difference Learning With Neural Networks

Abstract

Neural Temporal Difference (TD) Learning is an approximate temporal difference method for policy evaluation that uses a neural network for function approximation. Analysis of Neural TD Learning has proven to be challenging. In this paper we provide a convergence analysis of Neural TD Learning with a projection onto B(θ0, ω), a ball of fixed radius ω around the initial point θ0. We show an approximation bound of O(ε) + O (1/m) where ε is the approximation quality of the best neural network in B(θ0, ω) and m is the width of all hidden layers in the network.

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