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Modeling and Predicting Community Structure Changes in Time-Evolving Social Networks

机译:随时间推移的社交网络中社区结构变化的建模和预测

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摘要

As time evolves, communities in a social network may undergo various changes known as critical events. For instance, a community can either split into several other communities, expand into a larger community, shrink to a smaller community, remain stable or merge into another community. Prediction of critical events has attracted increasing attention in the recent literature. Learning the evolution of communities over time is a key step towards predicting the critical events the communities may undergo. This is an important and difficult issue in the study of social networks. In the work to date, there is a lack of formal approaches for modeling and predicting critical events over time. This motivates our effort to design a new statistical method for event prediction in order to make better use of histories of past changes. To this end, this paper proposes a sliding window analysis from which we develop a model that simultaneously exploits an autoregressive model and survival analysis techniques. The autoregressive model is employed here to simulate the evolution of the community structure, whereas the survival analysis techniques allow the prediction of future changes the community may undergo.
机译:随着时间的流逝,社交网络中的社区可能会发生称为关键事件的各种变化。例如,一个社区可以拆分为其他多个社区,扩展为更大的社区,缩小为较小的社区,保持稳定或合并为另一个社区。关键事件的预测在最近的文献中引起了越来越多的关注。了解社区随时间的演变是预测社区可能发生的关键事件的关键一步。在社会网络的研究中,这是一个重要而困难的问题。在迄今为止的工作中,缺乏用于随时间推移建模和预测关键事件的正式方法。这激发了我们为事件预测设计一种新的统计方法的努力,以便更好地利用过去更改的历史记录。为此,本文提出了滑动窗口分析方法,从中我们开发了一个模型,该模型同时利用了自回归模型和生存分析技术。这里使用自回归模型来模拟社区结构的演变,而生存分析技术可以预测社区可能发生的未来变化。

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