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Main Authors: Liu, Yuhan, Zhang, Juntian, Wu, Yichen, Takac, Martin, Lahlou, Salem, Chen, Xiuying, Lukas, Nils
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.06801
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author Liu, Yuhan
Zhang, Juntian
Wu, Yichen
Takac, Martin
Lahlou, Salem
Chen, Xiuying
Lukas, Nils
author_facet Liu, Yuhan
Zhang, Juntian
Wu, Yichen
Takac, Martin
Lahlou, Salem
Chen, Xiuying
Lukas, Nils
contents Multi-Agent Debate (MAD) has emerged as a promising paradigm for enhancing large language model reasoning. However, recent work reveals a limitation:standard MAD cannot improve belief correctness beyond majority voting; we refer to this as the Martingale Curse. This curse arises because correlated errors cause agents to converge toward erroneous consensus, where debate merely reinforces collective mistakes rather than filtering noise. We propose AceMAD, a framework that breaks the Martingale Curse by harnessing asymmetric cognitive potential energy to transform MAD from a random walk into a directed convergence process with positive drift. Through a peer-prediction mechanism, agents predict their peers' belief distributions, revealing asymmetric cognitive potential: truth-holders not only know the correct answer but also anticipate the crowd's misconceptions, while the hallucinating majority remains blind to their collective error. This asymmetry creates a potential energy gap that we quantify via strictly proper scoring rules. We prove this cognitive potential manifests as information-theoretic superiority and, under nonlinear aggregation, converts into submartingale drift toward truth, directly breaking the Martingale Curse. Experiments on challenging subsets across six benchmarks show AceMAD recovers sparse truth signals even when initial majorities are incorrect, substantially outperforming baseline methods.
format Preprint
id arxiv_https___arxiv_org_abs_2603_06801
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Breaking the Martingale Curse: Multi-Agent Debate via Asymmetric Cognitive Potential Energy
Liu, Yuhan
Zhang, Juntian
Wu, Yichen
Takac, Martin
Lahlou, Salem
Chen, Xiuying
Lukas, Nils
Artificial Intelligence
Multi-Agent Debate (MAD) has emerged as a promising paradigm for enhancing large language model reasoning. However, recent work reveals a limitation:standard MAD cannot improve belief correctness beyond majority voting; we refer to this as the Martingale Curse. This curse arises because correlated errors cause agents to converge toward erroneous consensus, where debate merely reinforces collective mistakes rather than filtering noise. We propose AceMAD, a framework that breaks the Martingale Curse by harnessing asymmetric cognitive potential energy to transform MAD from a random walk into a directed convergence process with positive drift. Through a peer-prediction mechanism, agents predict their peers' belief distributions, revealing asymmetric cognitive potential: truth-holders not only know the correct answer but also anticipate the crowd's misconceptions, while the hallucinating majority remains blind to their collective error. This asymmetry creates a potential energy gap that we quantify via strictly proper scoring rules. We prove this cognitive potential manifests as information-theoretic superiority and, under nonlinear aggregation, converts into submartingale drift toward truth, directly breaking the Martingale Curse. Experiments on challenging subsets across six benchmarks show AceMAD recovers sparse truth signals even when initial majorities are incorrect, substantially outperforming baseline methods.
title Breaking the Martingale Curse: Multi-Agent Debate via Asymmetric Cognitive Potential Energy
topic Artificial Intelligence
url https://arxiv.org/abs/2603.06801