与社区领袖一起预测事件

Jun Pang, Yang Zhang
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引用次数: 3

摘要

随着在线社交网络服务的兴起,对社交影响力的定量研究成为可能。领导力是社会影响力最直观和最常见的形式之一,理解它可以产生有吸引力的应用,如定向广告和病毒式营销。在这项工作中,我们重点研究了社会网络中领导者对事件预测的影响。我们提出了一种基于用户行为的算法来发现社会社区中的领导者。通过对现实生活中的社交网络数据集的分析,我们发现了一些有趣的观察结果,比如,领导者的朋友数量并没有明显增加,但他们比其他社区成员更活跃。我们通过学习任务来证明领导者对用户行为影响的有效性:给定领导者进行了一个事件,用户是否以及何时会执行该事件。实验结果表明,当社区中只有少数领导者时,事件预测总是非常有效的。
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Event Prediction with Community Leaders
With the emerging of online social network services, quantitative studies on social influence become achievable. Leadership is one of the most intuitive and common forms for social influence, understanding it could result in appealing applications such as targeted advertising and viral marketing. In this work, we focus on investigating leaders' influence for event prediction in social networks. We propose an algorithm based on events that users conduct to discover leaders in social communities. Analysis on the leaders that we found on a real-life social network dataset leads us to several interesting observations, such as that leaders do not have significantly higher number of friends but are more active than other community members. We demonstrate the effectiveness of leaders' influence on users' behaviors by learning tasks: given a leader has conducted one event, whether and when a user will perform the event. Experimental results show that with only a few leaders in a community the event predictions are always very effective.
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