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Main Authors: Wu, Zifan, Tang, Bo, Lin, Qian, Yu, Chao, Mao, Shangqin, Xie, Qianlong, Wang, Xingxing, Wang, Dong
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.14758
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author Wu, Zifan
Tang, Bo
Lin, Qian
Yu, Chao
Mao, Shangqin
Xie, Qianlong
Wang, Xingxing
Wang, Dong
author_facet Wu, Zifan
Tang, Bo
Lin, Qian
Yu, Chao
Mao, Shangqin
Xie, Qianlong
Wang, Xingxing
Wang, Dong
contents Primal-dual safe RL methods commonly perform iterations between the primal update of the policy and the dual update of the Lagrange Multiplier. Such a training paradigm is highly susceptible to the error in cumulative cost estimation since this estimation serves as the key bond connecting the primal and dual update processes. We show that this problem causes significant underestimation of cost when using off-policy methods, leading to the failure to satisfy the safety constraint. To address this issue, we propose conservative policy optimization, which learns a policy in a constraint-satisfying area by considering the uncertainty in cost estimation. This improves constraint satisfaction but also potentially hinders reward maximization. We then introduce local policy convexification to help eliminate such suboptimality by gradually reducing the estimation uncertainty. We provide theoretical interpretations of the joint coupling effect of these two ingredients and further verify them by extensive experiments. Results on benchmark tasks show that our method not only achieves an asymptotic performance comparable to state-of-the-art on-policy methods while using much fewer samples, but also significantly reduces constraint violation during training. Our code is available at https://github.com/ZifanWu/CAL.
format Preprint
id arxiv_https___arxiv_org_abs_2401_14758
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Off-Policy Primal-Dual Safe Reinforcement Learning
Wu, Zifan
Tang, Bo
Lin, Qian
Yu, Chao
Mao, Shangqin
Xie, Qianlong
Wang, Xingxing
Wang, Dong
Machine Learning
Primal-dual safe RL methods commonly perform iterations between the primal update of the policy and the dual update of the Lagrange Multiplier. Such a training paradigm is highly susceptible to the error in cumulative cost estimation since this estimation serves as the key bond connecting the primal and dual update processes. We show that this problem causes significant underestimation of cost when using off-policy methods, leading to the failure to satisfy the safety constraint. To address this issue, we propose conservative policy optimization, which learns a policy in a constraint-satisfying area by considering the uncertainty in cost estimation. This improves constraint satisfaction but also potentially hinders reward maximization. We then introduce local policy convexification to help eliminate such suboptimality by gradually reducing the estimation uncertainty. We provide theoretical interpretations of the joint coupling effect of these two ingredients and further verify them by extensive experiments. Results on benchmark tasks show that our method not only achieves an asymptotic performance comparable to state-of-the-art on-policy methods while using much fewer samples, but also significantly reduces constraint violation during training. Our code is available at https://github.com/ZifanWu/CAL.
title Off-Policy Primal-Dual Safe Reinforcement Learning
topic Machine Learning
url https://arxiv.org/abs/2401.14758