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Main Authors: Zhao, Weiye, Li, Feihan, Sun, Yifan, Wang, Yujie, Chen, Rui, Wei, Tianhao, Liu, Changliu
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.01212
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author Zhao, Weiye
Li, Feihan
Sun, Yifan
Wang, Yujie
Chen, Rui
Wei, Tianhao
Liu, Changliu
author_facet Zhao, Weiye
Li, Feihan
Sun, Yifan
Wang, Yujie
Chen, Rui
Wei, Tianhao
Liu, Changliu
contents Enforcing state-wise safety constraints is critical for the application of reinforcement learning (RL) in real-world problems, such as autonomous driving and robot manipulation. However, existing safe RL methods only enforce state-wise constraints in expectation or enforce hard state-wise constraints with strong assumptions. The former does not exclude the probability of safety violations, while the latter is impractical. Our insight is that although it is intractable to guarantee hard state-wise constraints in a model-free setting, we can enforce state-wise safety with high probability while excluding strong assumptions. To accomplish the goal, we propose Absolute State-wise Constrained Policy Optimization (ASCPO), a novel general-purpose policy search algorithm that guarantees high-probability state-wise constraint satisfaction for stochastic systems. We demonstrate the effectiveness of our approach by training neural network policies for extensive robot locomotion tasks, where the agent must adhere to various state-wise safety constraints. Our results show that ASCPO significantly outperforms existing methods in handling state-wise constraints across challenging continuous control tasks, highlighting its potential for real-world applications.
format Preprint
id arxiv_https___arxiv_org_abs_2410_01212
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Absolute State-wise Constrained Policy Optimization: High-Probability State-wise Constraints Satisfaction
Zhao, Weiye
Li, Feihan
Sun, Yifan
Wang, Yujie
Chen, Rui
Wei, Tianhao
Liu, Changliu
Machine Learning
Enforcing state-wise safety constraints is critical for the application of reinforcement learning (RL) in real-world problems, such as autonomous driving and robot manipulation. However, existing safe RL methods only enforce state-wise constraints in expectation or enforce hard state-wise constraints with strong assumptions. The former does not exclude the probability of safety violations, while the latter is impractical. Our insight is that although it is intractable to guarantee hard state-wise constraints in a model-free setting, we can enforce state-wise safety with high probability while excluding strong assumptions. To accomplish the goal, we propose Absolute State-wise Constrained Policy Optimization (ASCPO), a novel general-purpose policy search algorithm that guarantees high-probability state-wise constraint satisfaction for stochastic systems. We demonstrate the effectiveness of our approach by training neural network policies for extensive robot locomotion tasks, where the agent must adhere to various state-wise safety constraints. Our results show that ASCPO significantly outperforms existing methods in handling state-wise constraints across challenging continuous control tasks, highlighting its potential for real-world applications.
title Absolute State-wise Constrained Policy Optimization: High-Probability State-wise Constraints Satisfaction
topic Machine Learning
url https://arxiv.org/abs/2410.01212