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Predicting and containing epidemic risk using on-line friendship networks

机译:使用在线友谊网络预测和控制流行病风险

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摘要

To what extent can online social networks predict who is at risk of an infection? Many infections are transmitted through physical encounter between humans, but collecting detailed information about it can be expensive, might invade privacy, or might not even be possible. In this paper, we ask whether online social networks help predict and contain epidemic risk. Using a dataset from a popular online review service which includes over 100 thousand users and spans 4 years of activity, we build a time-varying network that is a proxy of physical encounter between its users (the encounter network) and a static network based on their reported online friendship (the friendship With computer simulations, we compare stochastic infection processes on the two networks, considering infections on the encounter network as the benchmark. First, we show that the friendship network is useful to identify the individuals at risk of infection, despite providing lower accuracy than the ideal case in which the encounters are known. This limited prediction accuracy is not only due to the static nature of the friendship network because a static version of the encounter network provides more accurate prediction of risk than the friendship network. Then, we show that periodical monitoring of the infection spreading on the encounter network allows to correct the infection predicted by a process spreading on the friendly staff ndship network, and achieves high prediction accuracy. Finally, we show that the friendship network contains valuable information to effectively contain epidemic outbreaks even when a limited budget is available for immunization. In particular, a strategy that immunizes random friends of random individuals achieves the same performance as knowing individuals’ encounters at a small additional cost, even if the infection spreads on the encounter network.
机译:在线社交网络可以在多大程度上预测谁有感染风险?许多感染是通过人与人之间的身体相遇传播的,但是收集有关感染的详细信息可能很昂贵,可能侵犯隐私或什至不可能。在本文中,我们询问在线社交网络是否有助于预测和控制流行病风险。使用来自受欢迎的在线评论服务的数据集,该数据集包含超过10万用户,并跨越4年的活动,我们构建了一个时变网络,该网络是其用户之间的物理遭遇的代理(遭遇网络)和基于他们报告的在线友谊(通过计算机模拟,我们将两个网络上的随机感染过程进行比较,并以遭遇网络上的感染为基准进行比较。首先,我们表明,友谊网络可用于识别有感染风险的个体,尽管提供的准确度比已知相遇的理想情况要低,但这种有限的预测准确性不仅是由于友谊网络的静态性质,因为相遇网络的静态版本提供的风险预测要比友谊网络更准确。然后,我们表明定期监视在遭遇网络中传播的感染可以纠正感染通过在友好的员工网络上传播的过程进行预测,并获得较高的预测准确性。最后,我们证明了友谊网络包含了有价值的信息,即使有效的免疫预算有限,也可以有效地遏制流行病的爆发。尤其是,一种免疫随机个体随机朋友的策略,即使感染在接触网络上传播,也能以与已知个体相遇相同的方式获得额外的小费用。

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