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Predicting Online Extremism, Content Adopters, and Interaction Reciprocity

机译:预测在线极端主义,内容采纳者和互动对等

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We present a machine learning framework that leverages a mixture of metadata, network, and temporal features to detect extremist users, and predict content adopters and interaction reciprocity in social media. We exploit a unique dataset containing millions of tweets generated by more than 25 thousand users who have been manually identified, reported, and suspended by Twitter due to their involvement with extremist campaigns. We also leverage millions of tweets generated by a random sample of 25 thousand regular users who were exposed to, or consumed, extremist content. We carry out three forecasting tasks, (ⅰ) to detect extremist users, (ⅱ) to estimate whether regular users will adopt extremist content, and finally (ⅲ) to predict whether users will reciprocate contacts initiated by extremists. All forecasting tasks are set up in two scenarios: a post hoc (time independent) prediction task on aggregated data, and a simulated real-time prediction task. The performance of our framework is extremely promising, yielding in the different forecasting scenarios up to 93 % AUC for extremist user detection, up to 80 % AUC for content adoption prediction, and finally up to 72% AUC for interaction reciprocity forecasting. We conclude by providing a thorough feature analysis that helps determine which are the emerging signals that provide predictive power in different scenarios.
机译:我们提出了一种机器学习框架,该框架利用元数据,网络和时间特征的混合来检测极端用户,并预测社交媒体中的内容采用者和交互对等。我们利用一个独特的数据集,其中包含由25,000多名用户生成的数百万条推文,这些用户由于参与极端主义运动而被Twitter手动识别,报告和暂停。我们还利用了2.5万名暴露于或消费极端主义内容的普通用户的随机样本所产生的数百万条推文。我们执行三个预测任务,(ⅰ)检测极端主义用户,(ⅱ)估计常规用户是否会采用极端主义的内容,最后(ⅲ)预测用户是否会回报极端主义者发起的联系。所有预测任务都在两种情况下设置:基于聚合数据的事后(与时间无关)预测任务和模拟的实时预测任务。我们框架的性能非常有前途,在不同的预测方案中,极端用户检测的AUC最高可达93%,内容采用预测的AUC最高可达80%,而交互互惠性预测的AUC最高可达72%。我们通过提供全面的特征分析来得出结论,该分析有助于确定哪些新兴信号在不同情况下提供了预测能力。

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