Guiding Search for Neural Theorem Proving via Proof Progress Prediction


View a PDF of the paper titled LeanProgress: Guiding Search for Neural Theorem Proving via Proof Progress Prediction, by Suozhi Huang and 3 other authors

View PDF
HTML (experimental)

Abstract:Mathematical reasoning remains a significant challenge for Large Language Models (LLMs) due to hallucinations. When combined with formal proof assistants like Lean, these hallucinations can be eliminated through rigorous verification, making theorem proving reliable. However, even with formal verification, LLMs still struggle with long proofs and complex mathematical formalizations. While Lean with LLMs offers valuable assistance with retrieving lemmas, generating tactics, or even complete proofs, it lacks a crucial capability: providing a sense of proof progress. This limitation particularly impacts the overall development efficiency in large formalization projects. We introduce LeanProgress, a method that predicts the progress in the proof. Training and evaluating our models made on a large corpus of Lean proofs from Lean Workbook Plus and Mathlib4 and how many steps remain to complete it, we employ data preprocessing and balancing techniques to handle the skewed distribution of proof lengths. Our experiments show that LeanProgress achieves an overall prediction accuracy of 75.1\% in predicting the amount of progress and, hence, the remaining number of steps. When integrated into a best-first search framework using Reprover, our method shows a 3.8\% improvement on Mathlib4 compared to baseline performances of 41.2\%, particularly for longer proofs. These results demonstrate how proof progress prediction can enhance both automated and interactive theorem proving, enabling users to make more informed decisions about proof strategies.

Submission history

From: Suozhi Huang [view email]
[v1]
Tue, 25 Feb 2025 07:46:36 UTC (2,354 KB)
[v2]
Thu, 27 Feb 2025 17:26:11 UTC (2,037 KB)



Source link

Leave a Comment

Your email address will not be published. Required fields are marked *

Review Your Cart
0
Add Coupon Code
Subtotal

 
Scroll to Top