Feb. 2, 2024, 3:45 p.m. | Weiqin Chen James Onyejizu Long Vu Lan Hoang Dharmashankar Subramanian Koushik Kar Sandipan Mishra

cs.LG updates on arXiv.org arxiv.org

Primal-dual methods have a natural application in Safe Reinforcement Learning (SRL), posed as a constrained policy optimization problem. In practice however, applying primal-dual methods to SRL is challenging, due to the inter-dependency of the learning rate (LR) and Lagrangian multipliers (dual variables) each time an embedded unconstrained RL problem is solved. In this paper, we propose, analyze and evaluate adaptive primal-dual (APD) methods for SRL, where two adaptive LRs are adjusted to the Lagrangian multipliers so as to optimize the …

application cs.ai cs.lg embedded math.oc natural optimization policy practice primal rate reinforcement reinforcement learning variables

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