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Is Mathematical Problem-Solving Expertise in Large Language Models Associated with Assessment Performance?

arXiv:2603.2563367.9h-index: 7
Predicted impact top 53% in AI · last 90 daysOriginality Incremental advance
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This work addresses the reliability of LLMs as assessors in math education, with implications for AI-supported adaptive instructional systems.

This study investigated whether stronger math problem-solving ability in large language models (LLMs) correlates with better assessment performance, finding that assessment accuracy was significantly higher on problems the same model solved correctly than incorrectly, though assessment remained more difficult than direct problem solving.

Large Language Models (LLMs) are increasingly used in math education not only as problem solvers but also as assessors of learners' reasoning. However, it remains unclear whether stronger math problem-solving ability is associated with stronger step-level assessment performance. This study examines that relationship using the GSM8K and MATH subsets of PROCESSBENCH, a human-annotated benchmark for identifying the earliest erroneous step in mathematical reasoning. We evaluate two LLM-based math tutor agent settings, instantiated with GPT-4 and GPT-5, in two independent tasks on the same math problems: solving the original problem and assessing a benchmark-provided solution by predicting the earliest erroneous step. Results show a consistent within-model pattern: assessment accuracy is substantially higher on math problem items the same model solved correctly than on items it solved incorrectly, with statistically significant associations across both models and datasets. At the same time, assessment remains more difficult than direct problem solving, especially on error-present solutions. These findings suggest that math problem-solving expertise supports stronger assessment performance, but reliable step-level diagnosis also requires additional capabilities such as step tracking, monitoring, and precise error localization. The results have implications for the design and evaluation of AI-supported Adaptive Instructional Systems (AISs) for formative assessment in math education.

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