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Bounded Confidence Opinion Dynamics in a Social Network of Bayesian Decision Makers

机译:贝叶斯决策者社交网络中的有界信心意见动态

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摘要

Bounded confidence opinion dynamics model the propagation of information in social networks. However, in the existing literature, opinions are only viewed as abstract quantities without semantics rather than as part of a decision-making system. In this work, opinion dynamics are examined when agents are Bayesian decision makers that perform hypothesis testing or signal detection, and the dynamics are applied to prior probabilities of hypotheses. Bounded confidence is defined on prior probabilities through Bayes risk error divergence, the appropriate measure between priors in hypothesis testing. This definition contrasts with the measure used between opinions in standard models: absolute error. It is shown that the rapid convergence of prior probabilities to a small number of limiting values is similar to that seen in the standard Krause-Hegselmann model. The most interesting finding in this work is that the number of these limiting values and the time to convergence changes with the signal-to-noise ratio in the detection task. The number of final values or clusters is maximal at intermediate signal-to-noise ratios, suggesting that the most contentious issues lead to the largest number of factions. It is at these same intermediate signal-to-noise ratios at which the degradation in detection performance of the aggregate vote of the decision makers is greatest in comparison to the Bayes optimal detection performance. Real-world data from the United States Senate is examined in connection with the proposed model.
机译:有限的置信度意见动态模型对社交网络中信息的传播进行建模。但是,在现有文献中,观点仅被视为没有语义的抽象量,而不是作为决策系统的一部分。在这项工作中,当代理人是执行假设检验或信号检测的贝叶斯决策者时,会检查意见动态,并将动态应用于假设的先验概率。通过贝叶斯风险误差散度定义先验概率的有限置信度,这是假设检验中先验之间的适当度量。该定义与标准模型中意见之间使用的度量形成对比:绝对误差。结果表明,先验概率快速收敛到少量极限值与标准Krause-Hegselmann模型中看到的相似。这项工作中最有趣的发现是,这些极限值的数量和收敛时间随检测任务中的信噪比而变化。在中间信噪比下,最终值或群集的数量最大,这表明最有争议的问题导致派系数量最多。在这些相同的中间信噪比下,与贝叶斯最佳检测性能相比,决策者的总体投票检测性能的下降最大。美国参议院的真实世界数据已与提出的模型进行了检查。

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