Puzzle Solving using Reasoning of Large Language Models: A Survey
Exploring the capabilities of Large Language Models (LLMs) in puzzle solving unveils critical insights into their potential and challenges in AI, marking a significant step towards understanding their applicability in complex reasoning tasks. This survey leverages a unique taxonomy -- dividing puzzl...
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Zusammenfassung: | Exploring the capabilities of Large Language Models (LLMs) in puzzle solving
unveils critical insights into their potential and challenges in AI, marking a
significant step towards understanding their applicability in complex reasoning
tasks. This survey leverages a unique taxonomy -- dividing puzzles into
rule-based and rule-less categories -- to critically assess LLMs through
various methodologies, including prompting techniques, neuro-symbolic
approaches, and fine-tuning. Through a critical review of relevant datasets and
benchmarks, we assess LLMs' performance, identifying significant challenges in
complex puzzle scenarios. Our findings highlight the disparity between LLM
capabilities and human-like reasoning, particularly in those requiring advanced
logical inference. The survey underscores the necessity for novel strategies
and richer datasets to advance LLMs' puzzle-solving proficiency and contribute
to AI's logical reasoning and creative problem-solving advancements. |
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DOI: | 10.48550/arxiv.2402.11291 |