Limited Attention and Centrality in Social Networks

Kristina Lerman, Prachi Jain, Rumi Ghosh, Jeon-Hyung Kang, P. Kumaraguru
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引用次数: 17

Abstract

How does one find important or influential people in an online social network? Researchers have proposed a variety of centrality measures to identify individuals that are, for example, often visited by a random walk, infected in an epidemic, or receive many messages from friends. Recent research suggests that a social media users' capacity to respond to an incoming message is constrained by their finite attention, which they divide over all incoming information, i.e., information sent by users they follow. We propose a new measure of centrality - limited-attention version of Bonacich's Alpha-centrality - that models the effect of limited attention on epidemic diffusion. The new measure describes a process in which nodes broadcast messages to their out-neighbors, but the neighbors' ability to receive the message depends on the number of in-neighbors they have. We evaluate the proposed measure on real-world online social networks and show that it can better reproduce an empirical influence ranking of users than other popular centrality measures.
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社交网络中的有限注意力和中心性
如何在在线社交网络中找到重要或有影响力的人?研究人员提出了各种各样的中心性度量来识别个人,例如,经常被随机漫步访问,感染了流行病,或者从朋友那里收到许多信息。最近的研究表明,社交媒体用户对收到的信息做出回应的能力受到他们有限的注意力的限制,他们将注意力分配给所有收到的信息,即他们关注的用户发送的信息。我们提出了一种新的中心性度量——Bonacich's α -中心性的有限关注版本——它模拟了有限关注对流行病扩散的影响。新方法描述了一个过程,在这个过程中,节点向其外部邻居广播消息,但邻居接收消息的能力取决于它们拥有的内部邻居的数量。我们在现实世界的在线社交网络上评估了提议的度量,并表明它可以比其他流行的中心性度量更好地再现用户的经验影响排名。
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