Estimating the rumor source with anti-rumor in social networks

Jaeyoung Choi, Sang-chul Moon, Jinwoo Shin, Yung Yi
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引用次数: 16

Abstract

Recently, the problem of detecting the rumor source in a social network has been much studied, where it has been shown that the detection probability cannot be beyond 31% even for regular trees. In this paper, we study the impact of an anti-rumor on the rumor source detection. We first show a negative result: the anti-rumor's diffusion does not increase the detection probability under Maximum-Likelihood-Estimator (MLE) when the number of infected nodes are sufficiently large by passive diffusion that the anti-rumor starts to be spread by a special node, called the protector, after is reached by the rumor. We next consider the case when the distance between the rumor source and the protector follows a certain type of distribution, but its parameter is hidden. Then, we propose the following learning algorithm: a) learn the distance distribution parameters under MLE, and b) detect the rumor source under Maximum-A-Posterior-Estimator (MAPE) based on the learnt parameters. We provide an analytic characterization of the rumor source detection probability for regular trees under the proposed algorithm, where MAPE outperforms MLE by up to 50% for 3-regular trees and by up to 63% when the degree of the regular tree becomes large. We demonstrate our theoretical findings through numerical results, and further present the simulation results for general topologies (e.g., Facebook and US power grid networks) even without knowledge of the distance distribution, showing that under a simple protector placement algorithm, MAPE produces the detection probability much larger than that by MLE.
用反谣言估计社交网络中的谣言来源
近年来,人们对社交网络中谣言来源的检测问题进行了大量的研究,研究表明,即使对于普通树木,检测概率也不能超过31%。在本文中,我们研究了反谣言对谣言源检测的影响。我们首先得到了一个否定的结果:当被动扩散的感染节点数量足够大时,当谣言到达一个称为保护器的特殊节点后,反谣言的扩散并不会增加最大似然估计下的检测概率。接下来,我们考虑谣言源与保护者之间的距离服从某种分布,但其参数是隐藏的情况。然后,我们提出了以下学习算法:a)学习MLE下的距离分布参数,b)根据学习到的参数在Maximum-A-Posterior-Estimator (MAPE)下检测谣言源。我们提供了在该算法下规则树的谣言源检测概率的分析表征,其中MAPE在3规则树下优于MLE高达50%,当规则树的程度变大时优于MLE高达63%。我们通过数值结果证明了我们的理论发现,并进一步给出了在不知道距离分布的情况下对一般拓扑(例如Facebook和美国电网)的仿真结果,表明在简单的保护器放置算法下,MAPE产生的检测概率远大于MLE。
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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