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The Value of Variance: Mitigating Debate Collapse in Multi-Agent Systems via Uncertainty-Driven Policy Optimization

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Multi-agent debate (MAD) systems improve LLM reasoning through iterative deliberation, but remain vulnerable to debate collapse, a failure type where final agent decisions are compromised on erroneous reasoning. Existing methods lack principled mechanisms to detect or prevent such failures. To address this gap, we first propose a hierarchical metric that quantifies behavioral uncertainty at three levels: intra-agent (individual reasoning uncertainty), inter-agent (interactive uncertainty), and system-level (output uncertainty). Empirical analysis across several benchmarks reveals that our proposed uncertainty quantification reliably indicates system failures, which demonstrates the validity of using them as diagnostic metrics to indicate the system failure. Subsequently, we propose a mitigation strategy by formulating an uncertainty-driven policy optimization to penalize self-contradiction, peer conflict, and low-confidence outputs in a dynamic debating environment. Experiments demonstrate that our proposed uncertainty-driven mitigation reliably calibrates the multi-agent system by consistently improving decision accuracy while reducing system disagreement.

Luoxi Tang, Yuqiao Meng, Joseph Costa, Yingxue Zhang, Muchao Ye, Zhaohan Xi• 2026

Related benchmarks

TaskDatasetResultRank
Commonsense Question AnsweringCSQA
Accuracy85.1
12
Commonsense ReasoningCSQA
Accuracy91.5
12
Mathematical ReasoningGSM8K
Accuracy92.3
12
Mathematical ReasoningGSM8K
Accuracy0.796
12
Question AnsweringTruthfulQA
Accuracy91.4
12
Question AnsweringTruthfulQA
Acc0.824
12
AccuracyGSM8K
Accuracy77.2
4
AccuracyTruthfulQA (TQA)
Accuracy (TQA)66.4
4
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