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Social Spam Discovery using Bayesian Network Classifiers based on Feature Extractions

机译:基于特征提取的贝叶斯网络分类器的社会垃圾邮件发现

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People always communicate with each other through social networking services (SNSs). However they often receive various kinds of unwelcomed messages that can be requests from uncomfortable friends or may be advertisements. In this paper, we defined these messages as "social spams", and suggested new classification method to detect them. By characterizing the problem of discovering social spams which frequently occurs in current popular SNSs, we extracted and exploited novel features that had not shown in the existing E-mail or web spamming prevention techniques. Our proposal for collecting various features such as behavior, celebrity, trust, common interest, etc. could incrementally been updated for SNS users. We modified the existing well-known classification techniques such as Bayesian network classifiers (BNCs) to customize for SNS features. To make decision efficiently, we computed Katz or trust scores with only part of updated network topologies.
机译:人们始终通过社交网络服务(SNSS)相互沟通。然而,他们经常收到各种不受欢迎的消息,可以从不舒服的朋友请求或可能是广告。在本文中,我们将这些消息定义为“社交垃圾邮件”,并建议检测它们的新分类方法。通过表征发现经常发生在当前流行的SNS的社交垃圾邮件的问题,我们提取和利用了现有电子邮件或Web垃圾邮件预防技术中未示出的新功能。我们为收集行为,名人,信任,共同兴趣等各种功能的提案可以逐步更新SNS用户。我们修改了现有的众所周知的分类技术,如贝叶斯网络分类器(BNC)以定制SNS功能。要有效地进行决策,我们计算了Katz或信任分数,只有一部分更新的网络拓扑。

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