网络钓鱼
人气
计算机科学
微博
社会化媒体
万维网
支柱
计算机安全
数据科学
互联网
互联网隐私
工程类
心理学
社会心理学
结构工程
作者
Bilal Abu-Salih,Dana Al Qudah,Malak Al-Hassan,Seyed Mohssen Ghafari,Tomayess Issa,Ibrahim Aljarah,Amin Beheshti,Sulaiman Alqahtani
标识
DOI:10.1177/01655515221124062
摘要
The communication revolution has perpetually reshaped the means through which people send and receive information. Social media is an important pillar of this revolution and has brought profound changes to various aspects of our lives. However, the open environment and popularity of these platforms inaugurate windows of opportunities for various cyber threats, thus social networks have become a fertile venue for spammers and other illegitimate users to execute their malicious activities. These activities include phishing hot and trendy topics and posting a wide range of contents in many topics. Hence, it is crucial to continuously introduce new techniques and approaches to detect and stop this category of users. This article proposes a novel and effective approach to detect social spammers. An investigation into several attributes to measure topic-dependent and topic-independent users’ behaviours on Twitter is carried out. The experiments of this study are undertaken on various machine learning classifiers. The performance of these classifiers is compared and their effectiveness is measured via a number of robust evaluation measures. Furthermore, the proposed approach is benchmarked against state-of-the-art social spam and anomalous detection techniques. These experiments report the effectiveness and utility of the proposed approach and embedded modules.
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