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The Impact of Structural Changes on Predictions of Diffusion in Networks

机译:结构变化对网络扩散预测的影响

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In a typical realistic scenario, there exist some past data about the structure of the network which are analyzed with respect to some possibly future spreading process, such as behavior, opinion, disease, or computer malware. How sensitive are the predictions made about spread and spreaders to the changes in the structure of the network? We investigate the answer to this question by considering seven real-world networks that have an explicit timeline and span a range of social interactions, from celebrity sightings to animal movement. For each dataset, we examine the results of the spread analysis with respect to the changes that occur in the network as the time unfolds as well as introduced random perturbations. We show that neither the estimates of the extent of spread for each individual nor the set of the top spreaders are robust to structural changes. Thus, analysis performed on historic data may not be relevant by the time it is acted upon.
机译:在典型的现实情况中,存在有关网络结构的一些过去数据,并针对某些将来的传播过程(例如行为,观点,疾病或计算机恶意软件)进行了分析。关于扩展和扩展器的预测对网络结构的变化有多敏感?我们通过考虑七个具有明确时间表的现实世界网络来调查此问题的答案,这些网络具有从名人目睹到动物运动的一系列社交互动,涉及范围广泛。对于每个数据集,我们针对时间展开以及引入的随机扰动,针对网络中发生的变化检查了扩散分析的结果。我们表明,对每个人的扩散程度的估计或对最大扩散器的集合都没有对结构变化的鲁棒性。因此,对历史数据进行的分析可能在其作用时就不相关了。

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