组装多平台集合社交机器人探测器,应用于美国 2020 年大选

L. Ng, K. Carley
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引用次数: 0

摘要

机器人一直是许多社交媒体研究的焦点,因为人们观察到它们参与操纵社交媒体上的信息和观点。这些研究分析了机器人在选举、抗议、健康传播等各种背景下的活动和影响。在进行这些分析之前,先要对机器人账户进行识别,以区分社交媒体用户的类别。在这项工作中,我们提出了一种用于僵尸检测的集合方法,设计了一个多平台僵尸检测架构,以处理僵尸检测管道中的几个问题:不完整的数据输入、最小化的特征工程、针对每个数据字段的优化分类器,还消除了对分类确定阈值的需求。通过这些设计决策,我们将僵尸检测框架推广到 Twitter、Reddit 和 Instagram。我们还进行了特征重要性分析,发现名称熵和互动数量(转发/分享)是判定僵尸的重要因素。最后,我们将多平台僵尸检测器应用于美国 2020 年总统大选,以识别和分析多个社交媒体平台上的僵尸活动,展示不同平台上的僵尸在网络言论中的差异。
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Assembling a multi-platform ensemble social bot detector with applications to US 2020 elections
Bots have been in the spotlight for many social media studies, for they have been observed to be participating in the manipulation of information and opinions on social media. These studies analyzed the activity and influence of bots in a variety of contexts: elections, protests, health communication and so forth. Prior to this analyzes is the identification of bot accounts to segregate the class of social media users. In this work, we propose an ensemble method for bot detection, designing a multi-platform bot detection architecture to handle several problems along the bot detection pipeline: incomplete data input, minimal feature engineering, optimized classifiers for each data field, and also eliminate the need for a threshold value for classification determination. With these design decisions, we generalize our bot detection framework across Twitter, Reddit and Instagram. We also perform feature importance analysis, observing that the entropy of names and number of interactions (retweets/shares) are important factors in bot determination. Finally, we apply our multi-platform bot detector to the US 2020 presidential elections to identify and analyze bot activity across multiple social media platforms, showcasing the difference in online discourse of bots from different platforms.
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