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Autores principales: Liu, Yuhang, Huang, Heyan, Yang, Yizhe, Zhao, Hongyan, Zeng, Zhizhuo, Gao, Yang
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2604.04791
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author Liu, Yuhang
Huang, Heyan
Yang, Yizhe
Zhao, Hongyan
Zeng, Zhizhuo
Gao, Yang
author_facet Liu, Yuhang
Huang, Heyan
Yang, Yizhe
Zhao, Hongyan
Zeng, Zhizhuo
Gao, Yang
contents Large language models (LLMs) have achieved strong performance on reasoning benchmarks, yet their ability to solve real-world problems requiring end-to-end workflows remains unclear. Mathematical modeling competitions provide a stringent testbed for evaluating such end-to-end problem-solving capability. We propose a problem-oriented, stage-wise evaluation framework that assesses LLM performance across modeling stages using expert-verified criteria. We validate the framework's reliability by comparing automatic scores with independent human expert judgments on problems from the China Postgraduate Mathematical Contest in Modeling, demonstrating substantially stronger alignment than existing evaluation schemes. Using this framework, we reveal a comprehension-execution gap in state-of-the-art LLMs: while they perform well in early stages such as problem identification and formulation, they exhibit persistent deficiencies in execution-oriented stages including model solving, code implementation, and result analysis. These gaps persist even with increased model scale. We further trace these failures to insufficient specification, missing verification, and lack of validation, with errors propagating across stages without correction. Our findings suggest that bridging this gap requires approaches beyond model scaling, offering insights for applying LLMs to complex real-world problem solving.
format Preprint
id arxiv_https___arxiv_org_abs_2604_04791
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle How Far Are We? Systematic Evaluation of LLMs vs. Human Experts in Mathematical Contest in Modeling
Liu, Yuhang
Huang, Heyan
Yang, Yizhe
Zhao, Hongyan
Zeng, Zhizhuo
Gao, Yang
Computation and Language
Large language models (LLMs) have achieved strong performance on reasoning benchmarks, yet their ability to solve real-world problems requiring end-to-end workflows remains unclear. Mathematical modeling competitions provide a stringent testbed for evaluating such end-to-end problem-solving capability. We propose a problem-oriented, stage-wise evaluation framework that assesses LLM performance across modeling stages using expert-verified criteria. We validate the framework's reliability by comparing automatic scores with independent human expert judgments on problems from the China Postgraduate Mathematical Contest in Modeling, demonstrating substantially stronger alignment than existing evaluation schemes. Using this framework, we reveal a comprehension-execution gap in state-of-the-art LLMs: while they perform well in early stages such as problem identification and formulation, they exhibit persistent deficiencies in execution-oriented stages including model solving, code implementation, and result analysis. These gaps persist even with increased model scale. We further trace these failures to insufficient specification, missing verification, and lack of validation, with errors propagating across stages without correction. Our findings suggest that bridging this gap requires approaches beyond model scaling, offering insights for applying LLMs to complex real-world problem solving.
title How Far Are We? Systematic Evaluation of LLMs vs. Human Experts in Mathematical Contest in Modeling
topic Computation and Language
url https://arxiv.org/abs/2604.04791