检测Twitter上的社交机器人:一篇文献综述

Eiman Alothali, Nazar Zaki, E. Mohamed, Hany Al Ashwal
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引用次数: 71

摘要

由于Twitter和Facebook等在线社交网络(OSNs)的普及呈指数级增长,模仿人类用户的机器账户数量也在增加。社交机器人账户(Sybils)在努力复制正常账户的行为方面变得更加复杂和具有欺骗性。因此,研究团体明显需要开发能够检测社交机器人的技术。本文介绍了最近出现的旨在区分社交机器人账户和人类账户的技术。我们将分析限制在Twitter社交媒体平台上的社交机器人检测上。我们回顾了目前正在使用的各种检测方案,并检查了常见的方面,如分类器、数据集和所采用的选定特征。我们还比较了用于验证分类器的评估技术。最后,我们强调了社交机器人检测领域仍然存在的挑战,并考虑了旨在解决这一问题的研究工作的未来方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Social Bots on Twitter: A Literature Review
Due to the exponential growth in the popularity of online social networks (OSNs), such as Twitter and Facebook, the number of machine accounts that are designed to mimic human users has increased. Social bots accounts (Sybils) have become more sophisticated and deceptive in their efforts to replicate the behaviors of normal accounts. As such, there is a distinct need for the research community to develop technologies that can detect social bots. This paper presents a review of the recent techniques that have emerged that are designed to differentiate between social bot account and human accounts. We limit the analysis to the detection of social bots on the Twitter social media platform. We review the various detection schemes that are currently in use and examine common aspects such as the classifier, datasets, and selected features employed. We also compare the evaluation techniques that are employed to validate the classifiers. Finally, we highlight the challenges that remain in the domain of social bot detection and consider future directions for research efforts that are designed to address this problem.
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