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Main Authors: Zha, Yantian, Guan, Lin, Kambhampati, Subbarao
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2110.05286
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author Zha, Yantian
Guan, Lin
Kambhampati, Subbarao
author_facet Zha, Yantian
Guan, Lin
Kambhampati, Subbarao
contents Our work aims at efficiently leveraging ambiguous demonstrations for the training of a reinforcement learning (RL) agent. An ambiguous demonstration can usually be interpreted in multiple ways, which severely hinders the RL-Agent from learning stably and efficiently. Since an optimal demonstration may also suffer from being ambiguous, previous works that combine RL and learning from demonstration (RLfD works) may not work well. Inspired by how humans handle such situations, we propose to use self-explanation (an agent generates explanations for itself) to recognize valuable high-level relational features as an interpretation of why a successful trajectory is successful. This way, the agent can provide some guidance for its RL learning. Our main contribution is to propose the Self-Explanation for RL from Demonstrations (SERLfD) framework, which can overcome the limitations of traditional RLfD works. Our experimental results show that an RLfD model can be improved by using our SERLfD framework in terms of training stability and performance.
format Preprint
id arxiv_https___arxiv_org_abs_2110_05286
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Learning from Ambiguous Demonstrations with Self-Explanation Guided Reinforcement Learning
Zha, Yantian
Guan, Lin
Kambhampati, Subbarao
Machine Learning
Our work aims at efficiently leveraging ambiguous demonstrations for the training of a reinforcement learning (RL) agent. An ambiguous demonstration can usually be interpreted in multiple ways, which severely hinders the RL-Agent from learning stably and efficiently. Since an optimal demonstration may also suffer from being ambiguous, previous works that combine RL and learning from demonstration (RLfD works) may not work well. Inspired by how humans handle such situations, we propose to use self-explanation (an agent generates explanations for itself) to recognize valuable high-level relational features as an interpretation of why a successful trajectory is successful. This way, the agent can provide some guidance for its RL learning. Our main contribution is to propose the Self-Explanation for RL from Demonstrations (SERLfD) framework, which can overcome the limitations of traditional RLfD works. Our experimental results show that an RLfD model can be improved by using our SERLfD framework in terms of training stability and performance.
title Learning from Ambiguous Demonstrations with Self-Explanation Guided Reinforcement Learning
topic Machine Learning
url https://arxiv.org/abs/2110.05286