On Malicious Agents in Non-Bayesian Social Learning with Uncertain Models

J. Z. Hare, César A. Uribe, Lance M. Kaplan, A. Jadbabaie
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引用次数: 12

Abstract

Social Learning is the process of cooperatively aggregating information between agents in order to collectively estimate or learn an unknown value. Most all research in social learning assume that the likelihoods of the private observations given the possible hypotheses are known with absolute certainty. However, these likelihoods must be machine learned before the social learning process. Recent work has extended social learning for uncertain likelihoods. Such likelihoods are only known within Dirichlet distributions due to limited training samples available to learn them. This paper investigates the effects of malicious agents when both the good and malicious agents are uncertain about their likelihoods. Such malicious agents are trying to drive the consensus to accept an incorrect hypothesis and reject the correct hypothesis. This paper also presents and evaluates a method to identify and remediate against the effects of the malicious agents.
不确定模型下非贝叶斯社会学习中的恶意代理研究
社会学习(Social Learning)是指智能体之间协作聚合信息,以集体估计或学习未知值的过程。大多数关于社会学习的研究都假设,在可能的假设下,私人观察的可能性是绝对确定的。然而,这些可能性必须在社会学习过程之前被机器学习。最近的工作将社会学习扩展到不确定的可能性。由于可用的训练样本有限,这种可能性只能在Dirichlet分布中知道。本文研究了当良性代理和恶意代理的可能性都不确定时,恶意代理的影响。这些恶意的代理人试图推动共识接受错误的假设,拒绝正确的假设。本文还提出并评估了一种识别和纠正恶意代理影响的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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