Verifiable Geometry Problem Solving: Solver-Driven Autoformalization and Theorem Proposing
arXiv:2606.27926v1 Announce Type: new Abstract: Geometry Problem Solving have increasingly adopt the neuro-symbolic paradigm, combining neural intuition with symbolic rigor. However, current frameworks suffer from severe bottlenecks in two core stages: autoformalization, which treats multimodal translation as a static task decoupled from downstream solver compatibility, and theorem prediction, where solvers frequently hit a deductive impasse due to fixed rule libraries. To address these, we prop...
arXiv cs.AI
·Can Li, Ting Zhang, Junbo Zhao, Hua Huang
·
// relacionados
Leia também
Blog
The US military used AI to pick thousands of targets but missed a note saying one was a school
Blog
HP accelerates enterprise workflows with OpenAI Frontier
Editorial
O fantasma do Fable 5: banido, o modelo vive nos datasets que o destilam
Editorial