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LLM for Complex Reasoning Task: An Exploratory Study in Fermi Problems

LLM for Complex Reasoning Task: An Exploratory Study in Fermi Problems

来源:Arxiv_logoArxiv
英文摘要

Fermi Problems (FPs) are mathematical reasoning tasks that require human-like logic and numerical reasoning. Unlike other reasoning questions, FPs often involve real-world impracticalities or ambiguous concepts, making them challenging even for humans to solve. Despite advancements in AI, particularly with large language models (LLMs) in various reasoning tasks, FPs remain relatively under-explored. This work conducted an exploratory study to examine the capabilities and limitations of LLMs in solving FPs. We first evaluated the overall performance of three advanced LLMs using a publicly available FP dataset. We designed prompts according to the recently proposed TELeR taxonomy, including a zero-shot scenario. Results indicated that all three LLMs achieved a fp_score (range between 0 - 1) below 0.5, underscoring the inherent difficulty of these reasoning tasks. To further investigate, we categorized FPs into standard and specific questions, hypothesizing that LLMs would perform better on standard questions, which are characterized by clarity and conciseness, than on specific ones. Comparative experiments confirmed this hypothesis, demonstrating that LLMs performed better on standard FPs in terms of both accuracy and efficiency.

Zishuo Liu、Carlos Rabat Villarreal、Mostafa Rahgouy、Amit Das、Zheng Zhang、Chang Ren、Dongji Feng

数学

Zishuo Liu,Carlos Rabat Villarreal,Mostafa Rahgouy,Amit Das,Zheng Zhang,Chang Ren,Dongji Feng.LLM for Complex Reasoning Task: An Exploratory Study in Fermi Problems[EB/OL].(2025-04-03)[2025-06-16].https://arxiv.org/abs/2504.02671.点此复制

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