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State Augmented Constrained Reinforcement Learning: Overcoming the Limitations of Learning With Rewards

Miguel Calvo-Fullana, Santiago Paternain, Luiz F. O. Chamon, Alejandro Ribeiro

2023IEEE Transactions on Automatic Control22 citationsDOI

Abstract

A common formulation of constrained reinforcement learning involves multiple rewards that must individually accumulate to given thresholds. In this class of problems, we show a simple example in which the desired optimal policy cannot be induced by any weighted linear combination of rewards. Hence, there exist constrained reinforcement learning problems for which neither regularized nor classical primal-dual methods yield optimal policies. This work addresses this shortcoming by augmenting the state with Lagrange multipliers and reinterpreting primal-dual methods as the portion of the dynamics that drives the multipliers evolution. This approach provides a systematic state augmentation procedure that is guaranteed to solve reinforcement learning problems with constraints. Thus, as we illustrate by an example, while previous methods can fail at finding optimal policies, running the dual dynamics while executing the augmented policy yields an algorithm that provably samples actions from the optimal policy.

Topics & Concepts

Reinforcement learningMathematical optimizationLagrange multiplierComputer scienceDual (grammatical number)State (computer science)Class (philosophy)Markov decision processSimple (philosophy)Optimal controlArtificial intelligenceMathematicsMarkov processAlgorithmPhilosophyLiteratureEpistemologyArtStatisticsReinforcement Learning in RoboticsEvolutionary Algorithms and ApplicationsAdvanced Multi-Objective Optimization Algorithms