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Influence Estimation on Social Media Networks Using Causal Inference

机译:使用因果推断影响社交媒体网络的估计

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Estimating influence on social media networks is an important practical and theoretical problem, especially because this new medium is widely exploited as a platform for disinformation and propaganda. This paper introduces a novel approach to influence estimation on social media networks and applies it to the real-world problem of characterizing active influence operations on Twitter during the 2017 French presidential elections. The new influence estimation approach attributes impact by accounting for narrative propagation over the network using a network causal inference framework applied to data arising from graph sampling and filtering. This causal framework infers the difference in outcome as a function of exposure, in contrast to existing approaches that attribute impact to activity volume or topological features, which do not explicitly measure nor necessarily indicate actual network influence. Cramér-Rao estimation bounds are derived for parameter estimation as a step in the causal analysis, and used to achieve geometrical insight on the causal inference problem. The ability to infer high causal influence is demonstrated on real-world social media accounts that are later independently confirmed to be either directly affiliated or correlated with foreign influence operations using evidence supplied by the U.S. Congress and journalistic reports.
机译:估计社交媒体网络的影响是一个重要的实际和理论问题,尤其是因为这种新媒体被广泛利用为欺骗和宣传的平台。本文介绍了一种对社交媒体网络影响估计的新方法,并将其应用于2017年法国总统选举中的特征在推特上的现实问题。新的影响估计方法通过使用应用于从图形采样和过滤产生的数据的网络因果推断框架计算网络对网络的叙事传播来影响。这种因果框架是曝光函数的结果的差异,与现有的影响对活动量或拓扑特征的影响,这不会明确测量,也不一定表明实际的网络影响。 Cramér-Rao估算界限被导出参数估计作为因果分析的一步,并用于实现对因果推理问题的几何洞察。在现实世界的社交媒体账户中表明了推断出高因果影响的能力,后来独立证实,使用美国国会和新闻报告提供的证据直接与外国影响行动联系或相关。

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