在线社交网络中垃圾邮件机器人检测的调查

Zineb Ellaky, F. Benabbou, Sara Ouahabi, N. Sael
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引用次数: 0

摘要

在线社交网络(OSN)已经成为人们生活中不可或缺的一部分。来自世界各地的人们通过分享图片和内容即时互动。他们还可以表达自己对政治、体育的看法,成为OSN影响用户的一部分。因此,随着OSN用户数量的大量增长,它也成为了恶意分子发布垃圾内容和信息的目标。恶意社交机器人(MSB)是威胁社交网络安全的最大威胁之一,已经进行了一些研究来检测它们。在这项工作中,我们专注于垃圾邮件机器人,并基于从用户配置文件和交互中提取的不同特征回顾了所有现有的机器人检测技术。本文分析和比较了2014年和2021年之间提出的技术,以获得最相关的特征,以改进垃圾邮件机器人检测以及最有效的机器学习ML和深度学习DL技术。对现有的数据集进行了调查,概述了研究方法的一些局限性,并提出了社交机器人技术检测改进的未来方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey of Spam Bots Detection in Online Social Networks
Online Social networks (OSN) have become an integral part of people's lives. People from all over the world interact instantly between each other by sharing pictures and content. They can also express their opinion about politics, sport, and be part of influencing users in OSN. So, with the large growth of the number of users of OSN, it has become a target for the vicious people that post spam contents and messages. The malicious social bots (MSB) are one of the biggest threats that menace the social networks security and several studies have been conducted to detect them. In this work we focus on spam bots and reviewed all the existing bot detection techniques based on different features extracted from users' profiles and interactions. The paper analyzed and compared the proposed techniques between 2014 and 2021 to get the most relevant features that improve the spam bot detection and the most efficient Machine learning ML and Deep learning DL techniques from OSN. An investigation on existing datasets is proposed, some limitations of the studied approaches are outlined and future directions for social bot techniques detection improvement are proposed.
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