preprintDec 2, 2025GOLD OA
Reinforcement Learning in POMDP's via Direct Gradient Ascent
Australian National University
Indexed inarxivdatacite
Abstract
This paper discusses theoretical and experimental aspects of gradient-based approaches to the direct optimization of policy performance in controlled POMDPs. We introduce GPOMDP, a REINFORCE-like algorithm for estimating an approximation to the gradient of the average reward as a function of the parameters of a stochastic policy. The algorithm's chief advantages are that it requires only a single sample path of the underlying Markov chain, it uses only one free parameter $β\in [0,1)$, which has a natural interpretation in terms of bias-variance trade-off, and it requires no knowledge of the underlying state. We prove convergence of GPOMDP and show how the gradient estimates produced by GPOMDP can be used in a…
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2Topics & keywords
Topics
Keywords
- Reinforcement learning
- Conjugate gradient method
- Gradient descent
- Convergence (economics)
- Markov chain
- Computer science
- Variance (accounting)
- Mathematical optimization
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