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A Framework for Unsupervised Spam Detection in Social Networking Sites

机译:社交网站中无监督垃圾邮件检测的框架

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Social networking sites offer users the option to submit user spam reports for a given message, indicating this message is inappropriate. In this paper we present a framework that uses these user spam reports for spam detection. The framework is based on the HITS web link analysis framework and is instantiated in three models. The models subsequently introduce propagation between messages reported by the same user, messages authored by the same user, and messages with similar content. Each of the models can also be converted to a simple semi-supervised scheme. We test our models on data from a popular social network and compare the models to two baselines, based on message content and raw report counts. We find that our models outperform both baselines and that each of the additions (reporters, authors, and similar messages) further improves the performance of the framework.
机译:社交网站为用户提供了针对给定消息提交用户垃圾邮件报告的选项,表明该消息不合适。在本文中,我们提出了一个使用这些用户垃圾邮件报告进行垃圾邮件检测的框架。该框架基于HITS Web链接分析框架,并在三个模型中实例化。随后,模型在同一用户报告的消息,同一用户创作的消息以及内容相似的消息之间引入传播。每个模型也可以转换为简单的半监督方案。我们根据流行的社交网络上的数据测试我们的模型,并根据消息内容和原始报告计数将模型与两个基准进行比较。我们发现我们的模型优于两个基准,并且每个附加模型(报告者,作者和类似消息)都进一步改善了框架的性能。

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