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CoMMa: Contribution-Aware Medical Multi-Agents From A Game-Theoretic Perspective

Yichen Wu
Yujin Oh
Sangjoon Park
Kailong Fan
Dania Daye
Hana Farzaneh
Xiang Li
Raul Uppot
Quanzheng Li
Main:8 Pages
8 Figures
Bibliography:2 Pages
7 Tables
Appendix:7 Pages
Abstract

Recent multi-agent frameworks have broadened the ability to tackle oncology decision support tasks that require reasoning over dynamic, heterogeneous patient data. We propose Contribution-Aware Medical Multi-Agents (CoMMa), a decentralized LLM-agent framework in which specialists operate on partitioned evidence and coordinate through a game-theoretic objective for robust decision-making. In contrast to most agent architectures relying on stochastic narrative-based reasoning, CoMMa utilizes deterministic embedding projections to approximate contribution-aware credit assignment. This yields explicit evidence attribution by estimating each agent's marginal utility, producing interpretable and mathematically grounded decision pathways with improved stability. Evaluated on diverse oncology benchmarks, including a real-world multidisciplinary tumor board dataset, CoMMa achieves higher accuracy and more stable performance than data-centralized and role-based multi-agents baselines.

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