Twitter上新闻和谣言的流行病学建模

Fang Jin, Edward R. Dougherty, Parang Saraf, Yang Cao, Naren Ramakrishnan
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引用次数: 322

摘要

对Twitter等社交平台上的信息扩散进行表征,使我们能够理解底层媒体的属性,并为传播模式建模。随着Twitter越来越受欢迎,它也成为了传播谣言和错误信息的场所。我们使用流行病学模型来描述twitter中由新闻和谣言引起的信息级联。具体而言,我们使用明确识别怀疑论者的SEIZ增强流行病模型来描述世界各地的八个事件,并跨越一系列事件类型。我们证明了我们的方法在捕获这些事件中的扩散方面是准确的。我们的方法可以有效地与其他使用内容建模和图论特征来检测(并可能破坏)谣言的策略相结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Epidemiological modeling of news and rumors on Twitter
Characterizing information diffusion on social platforms like Twitter enables us to understand the properties of underlying media and model communication patterns. As Twitter gains in popularity, it has also become a venue to broadcast rumors and misinformation. We use epidemiological models to characterize information cascades in twitter resulting from both news and rumors. Specifically, we use the SEIZ enhanced epidemic model that explicitly recognizes skeptics to characterize eight events across the world and spanning a range of event types. We demonstrate that our approach is accurate at capturing diffusion in these events. Our approach can be fruitfully combined with other strategies that use content modeling and graph theoretic features to detect (and possibly disrupt) rumors.
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