社交媒体中作为现实世界现象预测者的微弱信号

C. Charitonidis, A. Rashid, Paul J. Taylor
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引用次数: 10

摘要

近年来的全球和国内事件表明,在线社交媒体既可以是一股有益的力量(如阿拉伯之春),也可以是一股有害的力量(如伦敦骚乱)。在这两个例子中,社交媒体在群体的形成和组织中发挥了关键作用,在群体随后的集体行动(即从言论到行动的转变)的协调中发挥了关键作用。令人惊讶的是,尽管它的重要性显而易见,但人们对导致这种群体发展和向集体行动过渡的因素却知之甚少。本文重点研究了一种分析社交媒体数据的方法,以发现微弱信号,即最初出现在边缘的指标,但实际上是这种大规模现实世界现象的早期指标。我们的方法与现有研究相反,现有研究侧重于分析主要主题,即在特定时间点社交网络中普遍存在的强烈信号。对微弱信号的分析可以为预测提供有趣的可能性,在线用户生成的内容被用于识别和预测可能的离线未来事件。我们通过分析2011年伦敦骚乱期间收集的推文,并使用我们的弱信号来预测该背景下的引爆点,来展示我们的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weak signals as predictors of real-world phenomena in social media
Global and national events in recent years have shown that online social media can be a force for good (e.g., Arab Spring) and harm (e.g., the London riots). In both of these examples, social media played a key role in group formation and organization, and in the coordination of the group's subsequent collective actions (i.e., the move from rhetoric to action). Surprisingly, despite its clear importance, little is understood about the factors that lead to this kind of group development and the transition to collective action. This paper focuses on an approach to the analysis of data from social media to detect weak signals, i.e., indicators that initially appear at the fringes, but are, in fact, early indicators of such large-scale real-world phenomena. Our approach is in contrast to existing research which focuses on analysing major themes, i.e., the strong signals, prevalent in a social network at a particular point in time. Analysis of weak signals can provide interesting possibilities for forecasting, with online user-generated content being used to identify and anticipate possible offline future events. We demonstrate our approach through analysis of tweets collected during the London riots in 2011 and use of our weak signals to predict tipping points in that context.
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