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Distinguishing influence-based contagion from homophily-driven diffusion in dynamic networks

机译:区分动态网络中同构驱动的扩散与基于影响的传播

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摘要

Node characteristics and behaviors are often correlated with the structure of social networks over time. While evidence of this type of assortative mixing and temporal clustering of behaviors among linked nodes is used to support claims of peer influence and social contagion in networks, homophily may also explain such evidence. Here we develop a dynamic matched sample estimation framework to distinguish influence and homophily effects in dynamic networks, and we apply this framework to a global instant messaging network of 27.4 million users, using data on the day-by-day adoption of a mobile service application and users' longitudinal behavioral, demographic, and geographic data. We find that previous methods overestimate peer influence in product adoption decisions in this network by 300–700%, and that homophily explains >50% of the perceived behavioral contagion. These findings and methods are essential to both our understanding of the mechanisms that drive contagions in networks and our knowledge of how to propagate or combat them in domains as diverse as epidemiology, marketing, development economics, and public health.
机译:随着时间的流逝,节点的特性和行为通常与社交网络的结构相关。虽然这种类型的混合混合和链接节点之间的行为的时间集群的证据被用来支持网络中的同伴影响和社会传染的主张,但同质也可以解释这种证据。在这里,我们开发了一个动态匹配的样本估计框架,以区分动态网络中的影响和同构效应,并使用移动服务应用程序的日常使用数据,将该框架应用于2740万用户的全球即时消息网络。以及用户的纵向行为,人口统计和地理数据。我们发现以前的方法高估了该网络中产品采用决策中的同伴影响力300–700%,并且同质解释了> 50%的感知行为传染。这些发现和方法对于我们理解网络中传染病传播的机制以及我们如何在流行病学,市场营销,发展经济学和公共卫生等领域传播或对抗传染病的知识都是至关重要的。

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