时间网络中的线性阈值模型。社会影响的种子选择

Radosław Michalski
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引用次数: 3

摘要

在社交网络中寻找影响他人的最佳用户集的问题已经研究了十多年。正如已经证明的那样,这是一个np困难问题,因此,一些启发式方法被提出作为次优解。尽管如此,一个常用的假设是,种子是在静态网络上选择的,而不是在时间网络上。这种静态方法实际上与现实世界的网络相去甚远,在现实世界中,新节点可能会出现,旧节点可能会随着时间的推移而动态消失。最近被广泛探索的另一种更现实的方法是时间网络,即反映事件在时间上的发生[1]及其节点和边的变化的网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linear threshold model in temporal networks — Seed selection for social influence
The problem of finding optimal set of users for influencing others in social networks has been studied for more than ten years. As it has been shown, it is a NP-hard problem, so since than some heuristics were proposed as suboptimal solutions. Still, one of the commonly used assumption is the one that seeds are chosen on the static network, not the temporal one. This static approach is in fact far from the real-world networks, where new nodes may appear and old ones dynamically disappear in course of time. An alternative and more realistic approach, recently extensively explored, are temporal networks, i.e. networks that reflect the occurrence of events in time [1] and change in its nodes and edges.
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