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Main Authors: Wang, Yunke, Dong, Minjing, Zhao, Yukun, Du, Bo, Xu, Chang
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2310.07143
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author Wang, Yunke
Dong, Minjing
Zhao, Yukun
Du, Bo
Xu, Chang
author_facet Wang, Yunke
Dong, Minjing
Zhao, Yukun
Du, Bo
Xu, Chang
contents Imitation learning has emerged as a promising approach for addressing sequential decision-making problems, with the assumption that expert demonstrations are optimal. However, in real-world scenarios, most demonstrations are often imperfect, leading to challenges in the effectiveness of imitation learning. While existing research has focused on optimizing with imperfect demonstrations, the training typically requires a certain proportion of optimal demonstrations to guarantee performance. To tackle these problems, we propose to purify the potential noises in imperfect demonstrations first, and subsequently conduct imitation learning from these purified demonstrations. Motivated by the success of diffusion model, we introduce a two-step purification via diffusion process. In the first step, we apply a forward diffusion process to smooth potential noises in imperfect demonstrations by introducing additional noise. Subsequently, a reverse generative process is utilized to recover the optimal demonstration from the diffused ones. We provide theoretical evidence supporting our approach, demonstrating that the distance between the purified and optimal demonstration can be bounded. Empirical results on MuJoCo and RoboSuite demonstrate the effectiveness of our method from different aspects.
format Preprint
id arxiv_https___arxiv_org_abs_2310_07143
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Imitation Learning from Purified Demonstrations
Wang, Yunke
Dong, Minjing
Zhao, Yukun
Du, Bo
Xu, Chang
Machine Learning
Imitation learning has emerged as a promising approach for addressing sequential decision-making problems, with the assumption that expert demonstrations are optimal. However, in real-world scenarios, most demonstrations are often imperfect, leading to challenges in the effectiveness of imitation learning. While existing research has focused on optimizing with imperfect demonstrations, the training typically requires a certain proportion of optimal demonstrations to guarantee performance. To tackle these problems, we propose to purify the potential noises in imperfect demonstrations first, and subsequently conduct imitation learning from these purified demonstrations. Motivated by the success of diffusion model, we introduce a two-step purification via diffusion process. In the first step, we apply a forward diffusion process to smooth potential noises in imperfect demonstrations by introducing additional noise. Subsequently, a reverse generative process is utilized to recover the optimal demonstration from the diffused ones. We provide theoretical evidence supporting our approach, demonstrating that the distance between the purified and optimal demonstration can be bounded. Empirical results on MuJoCo and RoboSuite demonstrate the effectiveness of our method from different aspects.
title Imitation Learning from Purified Demonstrations
topic Machine Learning
url https://arxiv.org/abs/2310.07143