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arxiv: 2408.14855 · v1 · pith:NHMLJRZA · submitted 2024-08-27 · cs.AI · cs.LO

Enhancing Analogical Reasoning in the Abstraction and Reasoning Corpus via Model-Based RL

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classification cs.AI cs.LO
keywords model-basedreasoningtasksanalogicalabstractioncorpuslearningmethod
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This paper demonstrates that model-based reinforcement learning (model-based RL) is a suitable approach for the task of analogical reasoning. We hypothesize that model-based RL can solve analogical reasoning tasks more efficiently through the creation of internal models. To test this, we compared DreamerV3, a model-based RL method, with Proximal Policy Optimization, a model-free RL method, on the Abstraction and Reasoning Corpus (ARC) tasks. Our results indicate that model-based RL not only outperforms model-free RL in learning and generalizing from single tasks but also shows significant advantages in reasoning across similar tasks.

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