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arxiv:2512.00097

Gold-Medal-Level Olympiad Geometry Solving with Efficient Heuristic Auxiliary Constructions

Published on Nov 27
· Submitted by Xiao Liang on Dec 3
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Abstract

HAGeo, a heuristic-based method for adding auxiliary constructions in geometric deduction, achieves gold-medal level performance on IMO geometry problems, surpassing neural network-based approaches.

AI-generated summary

Automated theorem proving in Euclidean geometry, particularly for International Mathematical Olympiad (IMO) level problems, remains a major challenge and an important research focus in Artificial Intelligence. In this paper, we present a highly efficient method for geometry theorem proving that runs entirely on CPUs without relying on neural network-based inference. Our initial study shows that a simple random strategy for adding auxiliary points can achieve silver-medal level human performance on IMO. Building on this, we propose HAGeo, a Heuristic-based method for adding Auxiliary constructions in Geometric deduction that solves 28 of 30 problems on the IMO-30 benchmark, achieving gold-medal level performance and surpassing AlphaGeometry, a competitive neural network-based approach, by a notable margin. To evaluate our method and existing approaches more comprehensively, we further construct HAGeo-409, a benchmark consisting of 409 geometry problems with human-assessed difficulty levels. Compared with the widely used IMO-30, our benchmark poses greater challenges and provides a more precise evaluation, setting a higher bar for geometry theorem proving.

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We present a highly efficient method for geometry theorem proving that runs entirely on CPUs that achieves gold-medal human performance on IMO-level problems. We also construct HAGeo-409, a benchmark consisting of 409 geometry problems with human-assessed difficulty levels.

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