English

NonZero: Interaction-Guided Exploration for Multi-Agent Monte Carlo Tree Search

Machine Learning 2026-05-04 v1

Abstract

Monte Carlo Tree Search (MCTS) scales poorly in cooperative multi-agent domains because expansion must consider an exponentially large set of joint actions, severely limiting exploration under realistic search budgets. We propose NonZero, which keeps multi-agent MCTS tractable by running surrogate-guided selection over a low-dimensional nonlinear representation using an interaction-guided proposal rule, instead of directly exploring the full joint-action space. Our exploration uses an interaction score: single-agent deviations are ranked by predicted gain, while two-agent deviations are scored by a mixed-difference measure that reveals coordination benefits even when no single agent can improve alone. We formalize candidate proposal as a bandit problem over local deviations and derive a proposal rule, NonZero, with a sublinear local-regret guarantee for reaching approximate graph-local optima without enumerating the joint-action space. Empirically, NonZero improves sample efficiency and final performance on MatGame, SMAC, and SMACv2 relative to strong model-based and model-free baselines under matched search budgets.

Keywords

Cite

@article{arxiv.2605.00751,
  title  = {NonZero: Interaction-Guided Exploration for Multi-Agent Monte Carlo Tree Search},
  author = {Sizhe Tang and Zuyuan Zhang and Mahdi Imani and Tian Lan},
  journal= {arXiv preprint arXiv:2605.00751},
  year   = {2026}
}

Comments

Accepted by ICML 2026 as Spotlight

R2 v1 2026-07-01T12:45:24.673Z