社交媒体垃圾邮件检测研究综述

Ilke Yurtseven, Selami Bagriyanik, S. Ayvaz
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引用次数: 6

摘要

随着社交媒体在虚拟环境中的大量使用,不良行为者现在能够利用这些平台传播他们的恶意活动,如仇恨言论、垃圾邮件,甚至网络钓鱼。Twitter尤其适合这些类型的活动,因为它是最常见的微博社交媒体平台之一,拥有数百万活跃用户。此外,自2019年底以来,Covid-19在许多方面改变了人们的生活。由于有空闲时间,社交媒体的使用量增加了,但网络攻击的数量也大幅增加。为了防止这些活动,检测是一个非常关键的阶段。因此,本研究的主要目标是回顾恶意内容检测的最新进展,以及人工智能算法在有效检测社交媒体中的垃圾邮件和诈骗方面的贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review of Spam Detection in Social Media
With significant usage of social media to socialize in virtual environments, bad actors are now able to use these platforms to spread their malicious activities such as hate speech, spam, and even phishing to very large crowds. Especially, Twitter is suitable for these types of activities because it is one of the most common social media platforms for microblogging with millions of active users. Moreover, since the end of 2019, Covid-19 has changed the lives of individuals in many ways. While it increased social media usage due to free time, the number of cyber-attacks soared too. To prevent these activities, detection is a very crucial phase. Thus, the main goal of this study is to review the state-of-art in the detection of malicious content and the contribution of AI algorithms for detecting spam and scams effectively in social media.
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