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Information Source Detection in the SIR Model: A Sample-Path-Based Approach

机译:SIR模型中的信息源检测:基于样本路径的方法

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This paper studies the problem of detecting the information source in a network in which the spread of information follows the popular Susceptible-Infected-Recovered (SIR) model. We assume all nodes in the network are in the susceptible state initially, except one single information source that is in the infected state. Susceptible nodes may then be infected by infected nodes, and infected nodes may recover and will not be infected again after recovery. Given a snapshot of the network, from which we know the graph topology and all infected nodes but cannot distinguish susceptible nodes and recovered nodes, the problem is to find the information source based on the snapshot and the network topology. We develop a sample-path-based approach where the estimator of the information source is chosen to be the root node associated with the sample path that most likely leads to the observed snapshot. We prove for infinite-trees, the estimator is a node that minimizes the maximum distance to the infected nodes. A reverse-infection algorithm is proposed to find such an estimator in general graphs. We prove that for -regular trees such that , where is the node degree and is the infection probability, the estimator is within a constant distance from the actual source with a high probability, independent of the number of infected nodes and the time the snapshot is taken. Our simulation results show that for tree networks, the estimator produced by the reverse-infection algorithm is closer to the actual source than the one identified by the closeness centrality heuristic. We then further evaluate the performance of the reverse infection algorithm on several real-world networks.
机译:本文研究了在信息传播遵循流行的易感感染恢复(SIR)模型的网络中检测信息源的问题。我们假定网络中所有节点最初都处于易受感染状态,除了一个处于感染状态的单个信息源之外。然后,易受感染的节点可能会感染受感染的节点,并且受感染的节点可能会恢复,并且恢复后不会再次被感染。给定网络快照,我们可以从中了解图拓扑和所有受感染的节点,但无法区分易受感染的节点和已恢复的节点,问题是根据快照和网络拓扑查找信息源。我们开发了一种基于样本路径的方法,在该方法中,信息源的估计量被选择为与样本路径相关联的根节点,该路径很可能导致观察到的快照。我们证明了对于无限树,估计器是一个节点,该节点使与感染节点的最大距离最小。提出了一种反向感染算法来在一般图中找到这种估计量。我们证明了对于-规则树,其中,是节点度和感染概率,估计量与实际来源之间的距离很可能与实际来源保持恒定距离,而与感染节点的数量和快照的时间无关采取。我们的仿真结果表明,对于树形网络,反向感染算法产生的估计量比接近度中心性启发式算法所确定的估计量更接近实际来源。然后,我们进一步评估反向感染算法在几个实际网络中的性能。

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