Identifying Susceptible Agents in Time Varying Opinion Dynamics Through Compressive Measurements

Hoi-To Wai, A. Ozdaglar, A. Scaglione
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引用次数: 4

Abstract

We provide a compressive-measurement based method to detect susceptible agents who may receive misinformation through their contact with ‘stubborn agents’ whose goal is to influence the opinions of agents in the network. We consider a DeGroot-type opinion dynamics model where regular agents revise their opinions by linearly combining their neighbors' opinions, but stubborn agents, while influencing others, do not change their opinions. Our proposed method hinges on estimating the temporal difference vector of network-wide opinions, computed at time instances when the stubborn agents interact. We show that this temporal difference vector has approximately the same support as the locations of the susceptible agents. Moreover, both the interaction instances and the temporal difference vector can be estimated from a small number of aggregated opinions. The performance of our method is studied both analytically and empirically. We show that the detection error decreases when the social network is better connected, or when the stubborn agents are ‘less talkative’.
通过压缩测量识别时变意见动态中的敏感因素
我们提供了一种基于压缩测量的方法来检测易受影响的代理,这些代理可能通过与“顽固代理”的接触接收到错误信息,而“顽固代理”的目标是影响网络中代理的意见。我们考虑了一个degroot类型的意见动态模型,其中常规代理通过线性结合邻居的意见来修改他们的意见,而顽固代理在影响他人的同时不改变他们的意见。我们提出的方法依赖于估计网络范围内意见的时间差向量,在顽固代理交互的时间实例中计算。我们表明,这个时间差异向量与易感因子的位置具有大致相同的支持度。此外,交互实例和时间差向量都可以从少量的汇总意见中估计出来。本文对该方法的性能进行了分析和实证研究。我们表明,当社交网络连接得更好时,或者当顽固的代理“不那么健谈”时,检测误差会减少。
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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