多观测的谣言源检测:基本限制和算法

Zhaoxu Wang, Wenxiang Dong, Wenyi Zhang, C. Tan
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引用次数: 130

摘要

本文基于易感感染模型,从网络传播的统计角度出发,解决了用多个观测值检测单个谣言源的问题。对于树状网络,对单个谣言传播实例的多个顺序观察不能优于初始快照观察。对于多个独立的观测,这种情况显著改善。提出了一种基于联合谣言中心性的统一推理框架,并为度正则树网络提供了明确的检测性能。令人惊讶的是,即使只有两次观测,探测概率至少是一次观测的两倍,并且随着程度的增加,进一步接近于一次,即可靠的探测。这表明更丰富的多样性提高了可探测性。对于一般图,提出了一种基于宽度优先搜索策略的检测算法,并对其进行了评价。除了谣言来源检测之外,我们的研究结果还可以用于网络取证,以打击在线异常和欺诈性电子邮件垃圾邮件等反复出现的类似流行病的信息传播。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rumor source detection with multiple observations: fundamental limits and algorithms
This paper addresses the problem of a single rumor source detection with multiple observations, from a statistical point of view of a spreading over a network, based on the susceptible-infectious model. For tree networks, multiple sequential observations for one single instance of rumor spreading cannot improve over the initial snapshot observation. The situation dramatically improves for multiple independent observations. We propose a unified inference framework based on the union rumor centrality, and provide explicit detection performance for degree-regular tree networks. Surprisingly, even with merely two observations, the detection probability at least doubles that of a single observation, and further approaches one, i.e., reliable detection, with increasing degree. This indicates that a richer diversity enhances detectability. For general graphs, a detection algorithm using a breadth-first search strategy is also proposed and evaluated. Besides rumor source detection, our results can be used in network forensics to combat recurring epidemic-like information spreading such as online anomaly and fraudulent email spams.
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