Structure-aware transformer policy for inhomogeneous multi-task reinforcement learning불균일 다중 작업 강화학습을 위한 구조 인식 트랜스포머 정책 연구

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Modular Reinforcement Learning, where the agent is assumed to be morphologically structured as a graph, for example composed of limbs and joints, aims to learn a policy that is transferable to a structurally similar but different agent. Compared to traditional Multi-Task Reinforcement Learning, this promising approach allows us to cope with inhomogeneous tasks where the state and action space dimensions differ across tasks. Graph Neural Networks are a natural model for representing the pertinent policies, but a recent work has shown that their multi-hop message passing mechanism is not ideal for conveying important information to other modules and thus a transformer model without morphological information was proposed. In this work, we argue that the morphological information is still very useful and propose a transformer policy model that effectively encodes such information. Specifically, we encode the morphological information in terms of the traversal-based positional embedding and the graph-based relational embedding. We empirically show that the morphological information is crucial for modular reinforcement learning, substantially outperforming prior state-of-the-art methods on multi-task learning as well as transfer learning settings with different state and action space dimensions.
Advisors
Kim, Kee-Eungresearcher김기응researcher
Description
한국과학기술원 :김재철AI대학원,
Publisher
한국과학기술원
Issue Date
2022
Identifier
325007
Language
eng
Description

학위논문(석사) - 한국과학기술원 : 김재철AI대학원, 2022.2,[iii, 21 p. :]

URI
http://hdl.handle.net/10203/308175
Link
http://library.kaist.ac.kr/search/detail/view.do?bibCtrlNo=997688&flag=dissertation
Appears in Collection
AI-Theses_Master(석사논문)
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