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Multi-agent decision making: A Blackwell's informativeness approach

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The rapid development of large language models (LLMs) has motivated research on decision-making in multi-agent systems, where multiple agents collaborate to achieve shared objectives. Existing aggregation approaches, such as voting and debate, are largely ad-hoc and lack formal guarantees regarding the informativeness of the resulting decisions. In this paper, we provide a principled approach to analyse decisions made in the multi-LLM setting using Blackwell's informativeness framework. Within the Blackwell information-structure abstraction, we show that voting and debate induce information structures that are no more informative than the pooled private information of all agents. This result identifies Bayesian pooled posterior maximisation as an information-theoretic upper-bound decision rule under the Blackwell ordering. Motivated by this theoretical analysis, we introduce a practical method for LLM-based question-answering (QA) tasks that estimates each agent's posterior and approximates the pooled posterior using a product-of-posteriors estimator. Extensive experiments on six QA benchmarks demonstrate that our approach outperforms state-of-the-art multi-LLM debate and voting methods.

Zheng Zhang, Cuong C. Nguyen, Kevin Wells, Gustavo Carneiro• 2026

Related benchmarks

TaskDatasetResultRank
Medical Question AnsweringMedMCQA
Accuracy70.67
521
Multiple-choice Question AnsweringHellaSwag
Accuracy84.33
196
Question AnsweringMedMCQA
Accuracy64.67
98
Question AnsweringMMLU Pro.Med.
Accuracy95.59
42
Question AnsweringCSQA
Accuracy88
36
Question AnsweringMMLU Formal Logic (test)
Accuracy73.67
22
Question AnsweringHH-RLHF
Accuracy59
22
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