基于机器学习技术的社交媒体平台垃圾邮件检测和垃圾邮件制造者社区检测

L. Gopal
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引用次数: 0

摘要

近年来,社交媒体平台的受欢迎程度激增,导致垃圾邮件和垃圾邮件制造者社区的增加。本文利用机器学习技术对社交媒体平台中的垃圾邮件检测和垃圾邮件制造者社区检测进行了全面研究。提出的方法侧重于三个主要特征:基于评论行为(RB)的特征,基于评论语言(RL)的特征和基于用户行为(UB)的特征。通过结合这些功能,我们的目标是创建一个强大而准确的垃圾邮件检测模型,有效地识别社交媒体网络中的垃圾邮件内容和垃圾邮件发送者社区。基于评论行为(RB)的特性侧重于在用户生成内容中观察到的模式和趋势,例如发布的频率、发布之间的时间和评级的分布。另一方面,基于评论语言(RL)的特征分析内容的语言特征,包括特定关键词的使用,文本的复杂性和情感分析。最后,基于用户行为(UB)的特征检查用户在社交媒体平台上的行为,包括他们的社会联系、互动和活动模式。通过将这些功能整合到机器学习模型中,我们的目标是开发一种有效的垃圾邮件检测和垃圾邮件发送者社区检测系统,可用于保护社交媒体平台免受恶意活动的侵害。这项研究的结果将为这些功能在识别垃圾邮件和垃圾邮件发送者社区方面的有效性提供有价值的见解,并有助于不断努力提高社交媒体网络的安全性和完整性。
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Spam Detection and Spammer Community Detection in Social Media Platform Using Machine Learning Techniques
In recent years, social media platforms have experienced a surge in popularity, leading to an increase in spam and spammer communities. This paper presents a comprehensive study on spam detection and spammer community detection in social media platforms using machine learning techniques. The proposed approach focuses on three main features: Review-Behavioral (RB) Based features, Review-Linguistic (RL) Based Features, and User-Behavioral (UB) Based Features. By combining these features, we aim to create a robust and accurate spam detection model that effectively identifies spam content and spammer communities in social media networks. The Review-Behavioral (RB) Based features focus on the patterns and tendencies observed in user-generated content, such as the frequency of posting, the time between posts, and the distribution of ratings. Review-Linguistic (RL) Based Features, on the other hand, analyze the linguistic characteristics of the content, including the use of specific keywords, the complexity of the text, and sentiment analysis. Lastly, User-Behavioral (UB) Based Features examine the behavior of users in the social media platform, including their social connections, interactions, and activity patterns. By incorporating these features into a machine learning model, we aim to develop an effective spam detection and spammer community detection system that can be used to protect social media platforms from malicious activities. The results of this study will provide valuable insights into the effectiveness of these features in identifying spam and spammer communities, as well as contribute to the ongoing efforts to improve the security and integrity of social media networks.
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Information Technology in Industry
Information Technology in Industry COMPUTER SCIENCE, SOFTWARE ENGINEERING-
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