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Identifying Influential Nodes to Inhibit Bootstrap Percolation on Hyperbolic Networks

机译:识别有影响性节点以禁止双曲线网络的引导次数

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This work involves agent-based simulation of bootstrap percolation on hyperbolic networks. Our goal is to identify influential nodes in a network which might inhibit the percolation process. Our motivation, given a small scale random seeding of an activity in a network, is to identify the most influential nodes in a network to inhibit the spread of an activity amongst the general population of agents. This might model obstructing the spread of fake news in an on line social network, or cascades of panic selling in a network of mutual funds, based on rumour propagation. Hyperbolic networks typically display power law degree distribution, high clustering and skewed centrality distributions. We introduce a form of immunity into the networks, targeting nodes of high centrality and low clustering to be immune to the percolation process, then comparing outcomes with standard bootstrap percolation and with random selection of immune nodes. We generally observe that targeting nodes of high degree has a delaying effect on percolation but, for our chosen graph centralisation measures, a high degree of skew in the distribution of local node centrality values bears some correlation with an increased inhibitory imnact on percolation.
机译:这项工作涉及基于代理的双曲线网络引导次剖面仿真。我们的目标是识别网络中可能抑制渗滤过程的有影响力的节点。我们的动机,鉴于网络中活动的小规模随机播种,是识别网络中最有影响力的节点,以抑制代理人群体中的活动的传播。这可能模拟了在谣言传播的一线社交网络中妨碍了在线社交网络的传播,或者在相互资金网络中划分的恐慌销售。双曲线通常显示电力法学分布,高集群和偏斜中心分布。我们将一种豁免形式介绍到网络中,靶向高中心性和低聚类的节点免受渗滤过程,然后将结果与标准自卷菌渗滤进行比较,并随机选择免疫节点。我们一般观察到高度的靶向节点对渗滤产生延迟影响,但是对于我们所选择的图形集中测量,在局部节点中心性值的分布中的高度倾斜与渗透的增加的抑制性难以伴随的相关性。

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