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Autores principales: Wu, Shili, Jin, Yizhao, Niu, Puhua, Datta, Aniruddha, Andersson, Sean B.
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2506.19250
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author Wu, Shili
Jin, Yizhao
Niu, Puhua
Datta, Aniruddha
Andersson, Sean B.
author_facet Wu, Shili
Jin, Yizhao
Niu, Puhua
Datta, Aniruddha
Andersson, Sean B.
contents Behavior Cloning (BC) is an effective imitation learning technique and has even been adopted in some safety-critical domains such as autonomous vehicles. BC trains a policy to mimic the behavior of an expert by using a dataset composed of only state-action pairs demonstrated by the expert, without any additional interaction with the environment. However, During deployment, the policy observations may contain measurement errors or adversarial disturbances. Since the observations may deviate from the true states, they can mislead the agent into making sub-optimal actions. In this work, we use a global Lipschitz regularization approach to enhance the robustness of the learned policy network. We then show that the resulting global Lipschitz property provides a robustness certificate to the policy with respect to different bounded norm perturbations. Then, we propose a way to construct a Lipschitz neural network that ensures the policy robustness. We empirically validate our theory across various environments in Gymnasium. Keywords: Robust Reinforcement Learning; Behavior Cloning; Lipschitz Neural Network
format Preprint
id arxiv_https___arxiv_org_abs_2506_19250
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Robust Behavior Cloning Via Global Lipschitz Regularization
Wu, Shili
Jin, Yizhao
Niu, Puhua
Datta, Aniruddha
Andersson, Sean B.
Machine Learning
Artificial Intelligence
Behavior Cloning (BC) is an effective imitation learning technique and has even been adopted in some safety-critical domains such as autonomous vehicles. BC trains a policy to mimic the behavior of an expert by using a dataset composed of only state-action pairs demonstrated by the expert, without any additional interaction with the environment. However, During deployment, the policy observations may contain measurement errors or adversarial disturbances. Since the observations may deviate from the true states, they can mislead the agent into making sub-optimal actions. In this work, we use a global Lipschitz regularization approach to enhance the robustness of the learned policy network. We then show that the resulting global Lipschitz property provides a robustness certificate to the policy with respect to different bounded norm perturbations. Then, we propose a way to construct a Lipschitz neural network that ensures the policy robustness. We empirically validate our theory across various environments in Gymnasium. Keywords: Robust Reinforcement Learning; Behavior Cloning; Lipschitz Neural Network
title Robust Behavior Cloning Via Global Lipschitz Regularization
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2506.19250