网络中的中心性、八卦和信息扩散

M. Jackson
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引用次数: 1

摘要

我们如何识别网络中最具影响力的节点来启动扩散?人们能够很容易地识别出他们社区中最擅长传播信息的人吗?如果是的话,如何识别?利用理论和最新的数据,我们将研究这些问题,看看社会网络的结构如何影响信息传播,从八卦到新产品的传播。特别是,Banerjee、Chandrasekhar、Duflo和Jackson(2013)提出的扩散中心性概念将被考虑并显示为巢度中心性、特征向量中心性和其他中心性度量作为极端特殊情况。然后,通过跟踪网络内的八卦,节点可以很容易地学会对其他节点的中心性进行排名,而无需了解网络本身。最后,理论预测将用数据进行验证。研究结果发表在Banerjee、Chandrasekhar、Duflo和Jackson(2014)中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Centrality, gossip, and diffusion of information in networks
How can we identify the most influential nodes in a network for initiating diffusion? Are people able to easily identify those people in their communities who are best at spreading information, and if so How? Using theory and recent data, we will examine these questions and see how the structure of social networks affects information transmission ranging from gossip to the diffusion of new products. In particular, the concept of diffusion centrality from Banerjee, Chandrasekhar, Duflo, and Jackson (2013) will be considered and shown to nest degree centrality, eigenvector centrality, and other measures of centrality as extreme special cases. Then it will be shown that by tracking gossip within a network, nodes can easily learn to rank the centrality of other nodes without knowing anything about the network itself. Finally, the theoretical predictions will be tested with data. The results are presented in Banerjee, Chandrasekhar, Duflo, and Jackson (2014).
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