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An Algorithmic Framework for Estimating Rumor Sources With Different Start Times

机译:用于估计具有不同开始时间的谣言来源的算法框架

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摘要

We study the problem of identifying multiple rumor or infection sources in a network under the susceptible-infected model, and where these sources may start infection spreading at different times. We introduce the notion of an abstract estimator that, given the infection graph, assigns a higher value to each vertex in the graph it considers more likely to be a rumor source. This includes several of the single-source estimators developed in the literature. We introduce the concepts of a quasi-regular tree and a heavy center, which allows us to develop an algorithmic framework that transforms an abstract estimator into a two-source joint estimator, in which the infection graph can be thought of as covered by overlapping infection regions. We show that our algorithm converges to a local optimum of the estimation function if the underlying network is a quasi-regular tree. We further extend our algorithm to more than two sources, and heuristically to general graphs. Simulation results on both synthetic and real-world networks suggest that our algorithmic framework outperforms several existing multiple-source estimators, which typically assume that all sources start infection spreading at the same time.
机译:我们研究在易感性感染模型下识别网络中的多个谣言或感染源的问题,以及这些源可能在不同时间开始传播的问题。我们引入抽象估计器的概念,即给定感染图,它会为图中的每个顶点分配更高的值,该顶点被认为更可能是谣言的来源。这包括文献中开发的几种单源估计器。我们介绍了准规则树和重心的概念,这使我们能够开发一种算法框架,将抽象估计量转换为两源联合估计量,在这种情况下,可以将感染图视为重叠感染覆盖地区。我们证明如果基础网络是准规则树,我们的算法收敛到估计函数的局部最优。我们进一步将算法扩展到两个以上的源,并启发式地扩展到一般图。在综合和真实世界网络上的仿真结果均表明,我们的算法框架优于几种现有的多源估计器,这些估计器通常假设所有源都同时开始传播感染。

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