AILGAug 9, 2025

Pushdown Reward Machines for Reinforcement Learning

arXiv:2508.06894v23 citationsh-index: 60KR
Originality Incremental advance
AI Analysis

This work addresses the need for more expressive reward structures in reinforcement learning for temporally extended behaviors, representing an incremental advancement over existing reward machines.

The paper tackled the problem of encoding non-Markovian reward functions in reinforcement learning by extending reward machines to pushdown reward machines, which can recognize deterministic context-free languages, and showed that agents can be trained to perform tasks using this approach.

Reward machines (RMs) are automata structures that encode (non-Markovian) reward functions for reinforcement learning (RL). RMs can reward any behaviour representable in regular languages and, when paired with RL algorithms that exploit RM structure, have been shown to significantly improve sample efficiency in many domains. In this work, we present pushdown reward machines (pdRMs), an extension of reward machines based on deterministic pushdown automata. pdRMs can recognise and reward temporally extended behaviours representable in deterministic context-free languages, making them more expressive than reward machines. We introduce two variants of pdRM-based policies, one which has access to the entire stack of the pdRM, and one which can only access the top $k$ symbols (for a given constant $k$) of the stack. We propose a procedure to check when the two kinds of policies (for a given environment, pdRM, and constant $k$) achieve the same optimal state values. We then provide theoretical results establishing the expressive power of pdRMs, and space complexity results for the proposed learning problems. Lastly, we propose an approach for off-policy RL algorithms that exploits counterfactual experiences with pdRMs. We conclude by providing experimental results showing how agents can be trained to perform tasks representable in deterministic context-free languages using pdRMs.

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