From Reasoning to Learning: A Survey on Hypothesis Discovery and Rule Learning with Large Language Models
- URL: http://arxiv.org/abs/2505.21935v1
- Date: Wed, 28 May 2025 03:40:02 GMT
- Title: From Reasoning to Learning: A Survey on Hypothesis Discovery and Rule Learning with Large Language Models
- Authors: Kaiyu He, Zhiyu Chen,
- Abstract summary: In pursuit of artificial general intelligence (AGI), there is a growing need for models that learn, reason, and generate new knowledge.<n>This survey offers a structured lens to examine Large Language Models-based hypothesis discovery.<n>We synthesize existing work in hypothesis generation, application, and validation, identifying both key achievements and critical gaps.
- Score: 13.343562681680426
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Since the advent of Large Language Models (LLMs), efforts have largely focused on improving their instruction-following and deductive reasoning abilities, leaving open the question of whether these models can truly discover new knowledge. In pursuit of artificial general intelligence (AGI), there is a growing need for models that not only execute commands or retrieve information but also learn, reason, and generate new knowledge by formulating novel hypotheses and theories that deepen our understanding of the world. Guided by Peirce's framework of abduction, deduction, and induction, this survey offers a structured lens to examine LLM-based hypothesis discovery. We synthesize existing work in hypothesis generation, application, and validation, identifying both key achievements and critical gaps. By unifying these threads, we illuminate how LLMs might evolve from mere ``information executors'' into engines of genuine innovation, potentially transforming research, science, and real-world problem solving.
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