English

MathDuels: Evaluating LLMs as Problem Posers and Solvers

Computation and Language 2026-04-28 v2 Software Engineering

Abstract

As frontier language models attain near-ceiling performance on static mathematical benchmarks, existing evaluations are increasingly unable to differentiate model capabilities, largely because they cast models solely as solvers of fixed problem sets. We introduce MathDuels, a self-play benchmark in which models occupy dual roles: each authors math problems under adversarial prompting and solves problems authored by every other participant. Problems are produced through a three-stage generation pipeline (meta-prompting, problem generation, and difficulty amplification), and validated by an independent verifier that excludes ill-posed questions. A Rasch model (Rasch, 1993) jointly estimates solver abilities and problem difficulties; author quality is derived from the difficulties of each model's authored problems. Experiments across 19 frontier models reveal that authoring and solving capabilities are partially decoupled, and that dual-role evaluation reveals capability separations invisible in single-role benchmarks. As newer models enter the arena, they produce problems that defeat previously dominant solvers, so the benchmark's difficulty co-evolves with participant strength rather than saturating at a fixed ceiling. We host a public leaderboard that updates as new models are released.

Keywords

Cite

@article{arxiv.2604.21916,
  title  = {MathDuels: Evaluating LLMs as Problem Posers and Solvers},
  author = {Zhiqiu Xu and Shibo Jin and Shreya Arya and Mayur Naik},
  journal= {arXiv preprint arXiv:2604.21916},
  year   = {2026}
}
R2 v1 2026-07-01T12:32:52.124Z