Learning Clusters through Information Diffusion

L. Ostroumova, Alexey Tikhonov, N. Litvak
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引用次数: 13

Abstract

When information or infectious diseases spread over a network, in many practical cases, one can observe when nodes adopt information or become infected, but the underlying network is hidden. In this paper, we analyze the problem of finding communities of highly interconnected nodes, given only the infection times of nodes. We propose, analyze, and empirically compare several algorithms for this task. The most stable performance, that improves the current state-of-the-art, is obtained by our proposed heuristic approaches, that are agnostic to a particular graph structure and epidemic model.
通过信息扩散学习集群
当信息或传染病在网络上传播时,在许多实际情况下,人们可以观察到节点何时采用信息或被感染,但底层网络是隐藏的。在给定节点感染次数的情况下,我们分析了寻找高度互联节点群体的问题。我们为这项任务提出、分析和经验比较了几种算法。我们提出的启发式方法对特定的图结构和流行病模型不可知,从而获得了最稳定的性能,提高了当前的技术水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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