LGApr 22

Scaling Self-Play with Self-Guidance

arXiv:2604.2020991.13 citationsh-index: 5
Predicted impact top 7% in LG · last 90 daysOriginality Incremental advance
AI Analysis

This addresses scalability issues in self-play for LLMs, particularly in formal theorem proving, with incremental improvements over existing methods.

The paper tackles the problem of LLM self-play algorithms hitting learning plateaus due to reward hacking by the Conjecturer, and introduces Self-Guided Self-Play (SGS) to overcome this, resulting in a 7B parameter model solving more problems than a 671B parameter model after 200 rounds in formal theorem proving.

LLM self-play algorithms are notable in that, in principle, nothing bounds their learning: a Conjecturer model creates problems for a Solver, and both improve together. However, in practice, existing LLM self-play methods do not scale well with large amounts of compute, instead hitting learning plateaus. We argue this is because over long training runs, the Conjecturer learns to hack its reward, collapsing to artificially complex problems that do not help the Solver improve. To overcome this, we introduce Self-Guided Self-Play (SGS), a self-play algorithm in which the language model itself guides the Conjecturer away from degeneracy. In SGS, the model takes on three roles: Solver, Conjecturer, and a Guide that scores synthetic problems by their relevance to unsolved target problems and how clean and natural they are, providing supervision against Conjecturer collapse. Our core hypothesis is that language models can assess whether a subproblem is useful for achieving a goal. We evaluate the scaling properties of SGS by running training for significantly longer than prior works and by fitting scaling laws to cumulative solve rate curves. Applying SGS to formal theorem proving in Lean4, we find that it surpasses the asymptotic solve rate of our strongest RL baseline in fewer than 80 rounds of self-play and enables a 7B parameter model, after 200 rounds of self-play, to solve more problems than a 671B parameter model pass@4.

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