Abductive Symbolic Solver on Abstraction and Reasoning Corpus
- Abstract
- This paper addresses the challenge of enhancing artificial intelligence reasoning capabilities, focusing on logicality
within the Abstraction and Reasoning Corpus (ARC). Humans solve such visual reasoning tasks based on their
observations and hypotheses, and they can explain their solutions with a proper reason. However, many previous
approaches focused only on the grid transition and it is not enough for AI to provide reasonable and human-like
solutions. By considering the human process of solving visual reasoning tasks, we have concluded that the
thinking process is likely the abductive reasoning process. Thus, we propose a novel framework that symbolically
represents the observed data into a knowledge graph and extracts core knowledge that can be used for solution
generation. This information limits the solution search space and helps provide a reasonable mid-process. Our
approach holds promise for improving AI performance on ARC tasks by effectively narrowing the solution space
and providing logical solutions grounded in core knowledge extraction.
- Author(s)
- Lim, Mintaek; Lee, Seokki; Liyew, Woletemaryam; Kim, Sundong
- Issued Date
- 2024-08-04
- Type
- Conference Paper
- URI
- https://scholar.gist.ac.kr/handle/local/8171
- Publisher
- IJCAI
- Citation
- First International Workshop on Logical Foundations of Neuro-Symbolic AI, IJCAI 2024
- Conference Place
- KO
Jeju
-
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- ETC > 2. Conference Papers
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