策划Twitter选举完整性数据集,以更好地在线喷子表征

Albert Orozco, Reihaneh Rabbany
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引用次数: 0

摘要

在现代,社交媒体平台为互动和即时反映世界上发生的最重要事件提供了可访问的渠道。在本文中,我们首先展示了一组经过整理的数据集,这些数据集源于Twitter的信息运营工作。更值得注意的是,这4个已经被封号的账号让我们了解了国家支持的“人类喷子”是如何运作的。其次,我们详细分析了这些行为如何随时间变化,并在深度表征学习的背景下激励其使用和抽象:例如,学习并潜在地跟踪喷子行为。我们提出了这些任务的基线,并强调了文献中可能存在的差异。最后,我们利用学习到的行为预测表征,使用非暂停活跃账户的样本,从“真实”用户中对11个巨魔进行分类。12
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Curating the Twitter Election Integrity Datasets for Better Online Troll Characterization
In modern days, social media platforms provide accessible channels for the inter- 1 action and immediate reflection of the most important events happening around 2 the world. In this paper, we, firstly, present a curated set of datasets whose origin 3 stem from the Twitter’s Information Operations 1 efforts. More notably, these 4 accounts, which have been already suspended, provide a notion of how state-backed 5 human trolls operate. 6 Secondly, we present detailed analyses of how these behaviours vary over time, 7 and motivate its use and abstraction in the context of deep representation learning: 8 for instance, to learn and, potentially track, troll behaviour. We present baselines 9 for such tasks and highlight the differences there may exist within the literature. 10 Finally, we utilize the representations learned for behaviour prediction to classify 11 trolls from "real" users, using a sample of non-suspended active accounts. 12
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