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arxiv:2506.02690

Towards Geometry Problem Solving in the Large Model Era: A Survey

Published on Jun 3
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Abstract

This survey synthesizes advancements in geometry problem solving through benchmark construction, parsing, and reasoning paradigms, and proposes a unified framework to achieve human-level geometric reasoning.

AI-generated summary

Geometry problem solving (GPS) represents a critical frontier in artificial intelligence, with profound applications in education, computer-aided design, and computational graphics. Despite its significance, automating GPS remains challenging due to the dual demands of spatial understanding and rigorous logical reasoning. Recent advances in large models have enabled notable breakthroughs, particularly for SAT-level problems, yet the field remains fragmented across methodologies, benchmarks, and evaluation frameworks. This survey systematically synthesizes GPS advancements through three core dimensions: (1) benchmark construction, (2) textual and diagrammatic parsing, and (3) reasoning paradigms. We further propose a unified analytical paradigm, assess current limitations, and identify emerging opportunities to guide future research toward human-level geometric reasoning, including automated benchmark generation and interpretable neuro-symbolic integration.

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