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ARCLE: The Abstraction and Reasoning Corpus Learning Environment for Reinforcement Learning

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Author(s)
Lee, HosungKim, SejinLee, SeungpilHwang, SanhaLee, JihwanLee, Byung-JunKim, Sundong
Type
Conference Paper
Citation
3rd Conference on Lifelong Learning Agents (CoLLAs), 2024
Issued Date
2024-07-31
Abstract
This paper introduces ARCLE, an environment designed to facilitate reinforcement learning research on the Abstraction and Reasoning Corpus (ARC). Addressing this inductive reasoning benchmark with reinforcement learning presents these challenges: a vast action space, a hard-to-reach goal, and a variety of tasks. We demonstrate that an agent with proximal policy optimization can learn individual tasks through ARCLE. The adoption of non-factorial policies and auxiliary losses led to performance enhancements, effectively mitigating issues associated with action spaces and goal attainment. Based on these insights, we propose several research directions and motivations for using ARCLE, including MAML, GFlowNets, and World Models.
Publisher
Third Conference on Lifelong Learning Agents
Conference Place
IT
피사
URI
https://scholar.gist.ac.kr/handle/local/20908
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