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AutoGPS: Automated Geometry Problem Solving via Multimodal Formalization and Deductive Reasoning

About

Geometry problem solving presents distinctive challenges in artificial intelligence, requiring exceptional multimodal comprehension and rigorous mathematical reasoning capabilities. Existing approaches typically fall into two categories: neural-based and symbolic-based methods, both of which exhibit limitations in reliability and interpretability. To address this challenge, we propose AutoGPS, a neuro-symbolic collaborative framework that solves geometry problems with concise, reliable, and human-interpretable reasoning processes. Specifically, AutoGPS employs a Multimodal Problem Formalizer (MPF) and a Deductive Symbolic Reasoner (DSR). The MPF utilizes neural cross-modal comprehension to translate geometry problems into structured formal language representations, with feedback from DSR collaboratively. The DSR takes the formalization as input and formulates geometry problem solving as a hypergraph expansion task, executing mathematically rigorous and reliable derivation to produce minimal and human-readable stepwise solutions. Extensive experimental evaluations demonstrate that AutoGPS achieves state-of-the-art performance on benchmark datasets. Furthermore, human stepwise-reasoning evaluation confirms AutoGPS's impressive reliability and interpretability, with 99\% stepwise logical coherence.

Bowen Ping, Minnan Luo, Zhuohang Dang, Chenxi Wang, Chengyou Jia• 2025

Related benchmarks

TaskDatasetResultRank
Geometry Problem SolvingMathVista GPS
Accuracy86.2
38
Geometry Problem SolvingGeometry3K (test)
Choice Accuracy81.6
32
Geometry Problem SolvingPGPS9K (test)
Completion75.3
18
Geometry Problem SolvingGeoQA (test)
Choice Accuracy86.2
13
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