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A Self-Supervised Approach to Comment Spam Detection Based on Content Analysis

机译:基于内容分析的自监督评论垃圾邮件检测方法

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摘要

This paper studies the problems and threats posed by a type of spam in the blogosphere, called blog comment spam. It explores the challenges introduced by comment spam, generalizing the analysis substantially to any other short text type spam. The authors analyze different high-level features of spam and legitimate comments based on the content of blog postings. The authors use these features to cluster data separately for each feature using K-Means clustering algorithm. The authors also use self-supervised learning, which could classify spam and legitimate comments automatically. Comparedwith existing solutions, this approach demonstrates more flexibility and adaptability to the environment, as it requires minimal human intervention. The preliminary evaluation of the proposed spam detection system shows promising results.
机译:本文研究了博客领域中一种称为博客评论垃圾邮件的垃圾邮件所带来的问题和威胁。它探讨了评论垃圾邮件所带来的挑战,将分析实质上推广到了其他任何短文本类型的垃圾邮件。作者根据博客文章的内容分析垃圾邮件和合法评论的不同高级特征。作者使用这些功能使用K-Means聚类算法分别为每个功能聚类数据。作者还使用自我监督学习,可以对垃圾邮件和合法评论进行自动分类。与现有解决方案相比,此方法展示了对环境的更大灵活性和适应性,因为它需要最少的人工干预。提议的垃圾邮件检测系统的初步评估显示出可喜的结果。

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