LGAIMLOct 8, 2025

Scalable Policy-Based RL Algorithms for POMDPs

arXiv:2510.06540v25 citationsh-index: 3
AI Analysis

This work addresses scalability issues in reinforcement learning for partially observable environments, offering incremental improvements with theoretical guarantees.

The paper tackles the computational challenges of learning optimal policies in POMDPs by approximating them as finite-state MDPs, showing that the approximation error decreases exponentially with history length and providing the first finite-time bounds for TD learning in non-Markovian settings.

The continuous nature of belief states in POMDPs presents significant computational challenges in learning the optimal policy. In this paper, we consider an approach that solves a Partially Observable Reinforcement Learning (PORL) problem by approximating the corresponding POMDP model into a finite-state Markov Decision Process (MDP) (called Superstate MDP). We first derive theoretical guarantees that improve upon prior work that relate the optimal value function of the transformed Superstate MDP to the optimal value function of the original POMDP. Next, we propose a policy-based learning approach with linear function approximation to learn the optimal policy for the Superstate MDP. Consequently, our approach shows that a POMDP can be approximately solved using TD-learning followed by Policy Optimization by treating it as an MDP, where the MDP state corresponds to a finite history. We show that the approximation error decreases exponentially with the length of this history. To the best of our knowledge, our finite-time bounds are the first to explicitly quantify the error introduced when applying standard TD learning to a setting where the true dynamics are not Markovian.

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