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Mathematical Capabilities of Large Language Models in Finnish Matriculation Examination

Authors
Mika Setala,
Pieta Sikstrom,
Ville Heilala,
Tommi Karkkainen
Date
Publisher
arXiv
Large language models (LLMs) have shown increasing promise in educational settings, yet their mathematical reasoning has been considered evolving. This study evaluates the mathematical capabilities of various LLMs using the Finnish matriculation examination, a high-stakes digital test for upper secondary education. Initial tests yielded moderate performance corresponding to mid-range grades, but later evaluations demonstrated substantial improvements as the language models evolved. Remarkably, some models achieved near-perfect or perfect scores, matching top student performance and qualifying for university admission. Our findings highlight the rapid advances in the mathematical proficiency of LLMs and illustrate their potential to also support educational assessments at scale.
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