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Collective Influence Algorithm to find influencers via optimal percolation in massively large social media

机译:集体影响力算法来寻找最优通过渗透影响力的大型大型社交媒体

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We elaborate on a linear-time implementation of Collective-Influence (CI) algorithm introduced by Morone, Makse, Nature 524, 65 (2015) to find the minimal set of influencers in networks via optimal percolation. The computational complexity of CI is O(N log N) when removing nodes one-by-one, made possible through an appropriate data structure to process CI. We introduce two Belief-Propagation (BP) variants of CI that consider global optimization via message-passing: CI propagation (CIP) and Collective-Immunization-Belief-Propagation algorithm (CIBP) based on optimal immunization. Both identify a slightly smaller fraction of influencers than CI and, remarkably, reproduce the exact analytical optimal percolation threshold obtained in Random Struct. Alg. 21, 397 (2002) for cubic random regular graphs, leaving little room for improvement for random graphs. However, the small augmented performance comes at the expense of increasing running time to O(N(2)), rendering BP prohibitive for modern-day big-data. For instance, for big-data social networks of 200 million users (e.g., Twitter users sending 500 million tweets/day), CI finds influencers in 2.5?hours on a single CPU, while all BP algorithms (CIP, CIBP and BDP) would take more than 3,000 years to accomplish the same task.
机译:我们详细阐述了MORONE,MAKSE,NATH,NERITE 524,65(2015)引入的集体影响(CI)算法的线性时间实施,以通过最佳的渗透找到网络中的最小影响因素。当逐一移除节点时,CI的计算复杂性是O(n log n),通过适当的数据结构来处理CI。我们介绍了CI的两个信念传播(BP)变体,通过消息通过:CI传播(CIP)和集体免疫 - 信仰 - 传播算法(CIBP),基于最佳免疫。两者都识别比Ci略小的影响因素,并且显着地再现在随机结构中获得的精确分析最佳渗透阈值。阿尔。 21,397(2002)用于立方随机常规图表,留下小空间,以改善随机图。然而,小的增强性能以增加运行时间到O(n(2))的费用,渲染BP对现代大数据的禁止。例如,对于2亿用户的大数据社交网络(例如,发送500万推文/日的Twitter用户),CI在单个CPU上的2.5小时内找到了影响因素,而所有BP算法(CIP,CIBP和BDP)将花费3000多年来完成同样的任务。

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