信息扩散网络中影响指标的比较

Vanesa Junquero-Trabado, Nuria Trench-Ribes, Miquel Angel Aguila-Lorente, David Dominguez-Sal
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引用次数: 3

摘要

社交网络的重要性推动了对用户之间互动的分析。事实上,用户可能会影响他们的朋友或他们朋友的朋友,这使得研究这些社交互动在许多学科中都是必要的。我们设计了一个灵活的模型,可以映射到许多类似社交的网络。具体来说,我们研究并比较了其中的三个网络:安然、Twitter和Scopus。我们对影响的几个变量及其在每个网络中的重要性进行了比较。此外,我们还研究了它们与影响传播深度的相关性。我们观察到,在一般情况下,变量之间表现出相关性,但当我们研究最具影响力的用户时,它们之间的相关性并不强。最后,在所有情况下影响都不是很深,这意味着影响传播通常是局部的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of influence metrics in information diffusion networks
The importance of social networks has pushed the analysis of the interactions among their users. The fact that a user may influence their friends or the friends of their friends makes the study of these social interactions necessary for many disciplines. We design a flexible model that can be mapped to many social-like networks. Specifically, we study and compare three of these networks: Enron, Twitter and Scopus. We present a comparison of several variables of influence and how important they are in each network. In addition, we study how correlated they are and the depth of influence propagation. We observe that in general variables exhibit correlation between them but they are not strongly correlated when we study the most influencing users. Finally, the influence is not very deep in all cases which means that influence propagation is generally local.
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