基于网络分析的虚假信息活动检测研究

Luis Vargas, Patrick Emami, Patrick Traynor
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引用次数: 53

摘要

通过大规模协调努力,寻求影响和分化政治议题。在这个过程中,这些努力留下了人工制品,研究人员利用这些人工制品来分析虚假信息被删除后所采用的策略。事实证明,协调网络分析有助于了解虚假信息活动的运作方式;然而,这些法医工具作为一种检测机制的有用性仍然是一个悬而未决的问题。在本文中,我们探索使用协调网络分析来生成特征,以区分虚假信息活动与合法Twitter活动。这样做将为人类分析师在考虑撤资时提供更多证据。我们为Twitter虚假信息活动和合法Twitter社区创建了一个日常协调网络的时间序列,并基于从这些网络中提取的统计特征训练了一个二元分类器。我们的研究结果表明,分类器可以以很高的准确率预测已知虚假信息运动的未来协调活动(F1 =0.98)。在更具挑战性的分布外活动分类任务上,性能下降但仍然有希望(F1= 0.71),主要是由于假阳性率的增加。通过此分析,我们表明,虽然协调模式可能有助于提供虚假信息活动的证据,但在大规模部署之前,需要进一步调查以改进此方法。
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On the Detection of Disinformation Campaign Activity with Network Analysis
seek to influence and polarize political topics through massive coordinated efforts. In the process, these efforts leave behind artifacts, which researchers have leveraged to analyze the tactics employed by disinformation campaigns after they are taken down. Coordination network analysis has proven helpful for learning about how disinformation campaigns operate; however, the usefulness of these forensic tools as a detection mechanism is still an open question. In this paper, we explore the use of coordination network analysis to generate features for distinguishing the activity of a disinformation campaign from legitimate Twitter activity. Doing so would provide more evidence to human analysts as they consider takedowns. We create a time series of daily coordination networks for both Twitter disinformation campaigns and legitimate Twitter communities, and train a binary classifier based on statistical features extracted from these networks. Our results show that the classifier can predict future coordinated activity of known disinformation campaigns with high accuracy (F1 =0.98). On the more challenging task of out-of-distribution activity classification, the performance drops yet is still promising (F1= 0.71), mainly due to an increase in the false positive rate. By doing this analysis, we show that while coordination patterns could be useful for providing evidence of disinformation activity, further investigation is needed to improve upon this method before deployment at scale.
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