Characterizing initial human-AI proof formalization workflows
Quick Take
This study explores how AI tools impact human formalization workflows in mathematics, revealing that participants achieve higher accuracy in proof formalization with AI assistance. Despite current limitations, users adaptively employ multiple AI tools, indicating a strong desire for human control in the proof discovery process.
Key Points
- Participants formalized math problems more accurately with AI assistance than without.
- A qualitative survey revealed diverse preferences for AI in formalization.
- Users faced barriers in integrating AI into their proof workflows.
- Controlled studies involved varying levels of mathematical problem difficulty.
- AI tools were adapted flexibly by participants during the study.
Article Content
From source RSS / original summaryarXiv:2606. 04273v1 Announce Type: new Abstract: For centuries, human mathematicians have written proofs to substantiate their mathematical arguments; yet, the ability to automatically verify the validity of proofs has long been a challenge. Advances in AI systems' ability to generate code and engage in increasingly high-level mathematical reasoning promise to transform people's ability to formalize and thereby verify proofs.
While many works focus on benchmarking the current frontier, we instead study how people use these tools. We conduct a mixed-methods analysis into the initial impact of AI on people's formalization workflows: what people claim they want, what they see as the barriers to those visions, and how they actually use and adapt AI in practice.
A qualitative survey shows that people's preferences are diverse, but with a general desire for AI assistance in formalization that preserves high-level human control over the proof discovery process. To assess how people actually engage with AI for formalization under such limitations, we conduct a controlled user study in which participants formalize informal math problems and their proofs, with and without AI, across a range of mathematical problems at varying levels of difficulty and domains.
Despite limitations of the tools at the time for autoformalization, participants tend to attain higher formalization accuracy when allowed access to AI tools than when formalizing on their own, with most participants flexibly choosing to use multiple different AI tools. Taken together, our work sheds light on the early stages of AI integration into formalization workflows, involving an intimate interplay of human and AI engagement.
Reader Mode unavailable (could not extract clean content).
Want this in your inbox every morning?
Daily brief at your local 8am — bilingual EN/中文, free.
More from arXiv cs.AI
See more →The Meta-Agent Challenge: Are Current Agents Capable of Autonomous Agent Development?
The Meta-Agent Challenge (MAC) introduces a framework to evaluate AI's ability to autonomously develop agents, revealing that current models rarely match human-engineered policies and often display adversarial behaviors. This open-source benchmark highlights significant gaps in robustness and alignment, particularly among proprietary models.