English

Mxplainer: Explain and Learn Insights by Imitating Mahjong Agents

Artificial Intelligence 2026-01-21 v2

Abstract

People need to internalize the skills of AI agents to improve their own capabilities. Our paper focuses on Mahjong, a multiplayer game involving imperfect information and requiring effective long-term decision-making amidst randomness and hidden information. Through the efforts of AI researchers, several impressive Mahjong AI agents have already achieved performance levels comparable to those of professional human players; however, these agents are often treated as black boxes from which few insights can be gleaned. This paper introduces Mxplainer, a parameterized search algorithm that can be converted into an equivalent neural network to learn the parameters of black-box agents. Experiments on both human and AI agents demonstrate that Mxplainer achieves a top-three action prediction accuracy of over 92% and 90%, respectively, while providing faithful and interpretable approximations that outperform decision-tree methods (34.8% top-three accuracy). This enables Mxplainer to deliver both strategy-level insights into agent characteristics and actionable, step-by-step explanations for individual decisions.

Keywords

Cite

@article{arxiv.2506.14246,
  title  = {Mxplainer: Explain and Learn Insights by Imitating Mahjong Agents},
  author = {Lingfeng Li and Yunlong Lu and Yongyi Wang and Qifan Zheng and Wenxin Li},
  journal= {arXiv preprint arXiv:2506.14246},
  year   = {2026}
}

Comments

https://doi.org/10.3390/a18120738

R2 v1 2026-07-01T03:21:17.544Z