识别微博轨迹中的动态和集体行为

Huan-Kai Peng, R. Marculescu
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引用次数: 8

摘要

微博通过动态的用户交互传播实时信息。虽然这种交互可能产生模式是直观的,但很难以令人满意的细节识别和描述它们。本文提出采用动态图和时间序列相结合的方法来研究微博的动态和集体行为。为了实现自动模式识别,开发了一个距离度量来包含动态交互的异构方面。我们使用一个月的Twitter数据集证明了所提出方法的有效性,并表明新的表示和距离度量对于发现集体微博的模式都是必不可少的,例如突发新闻的传播、广告、社会运动和利益集团的形成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying dynamics and collective behaviors in microblogging traces
Microblogging disseminates realtime information through dynamic user interactions. While it is intuitive that such interactions may generate patterns, it is difficult to identify and characterize them in satisfactory detail. In this paper, we propose using a combination of dynamic graphs and time-series to study the dynamics and collective behaviors in microblogging. To enable automatic pattern identification, a distance metric is developed to incorporate the heterogeneous aspects of the dynamical interactions. We demonstrate the effectiveness of the proposed approach using a month long Twitter dataset and show that the new representation and distance metric are both essential for discovering the patterns of collective microblogging, such as propagation of breaking news, advertisement, social movement, and interest group formation.
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