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Detecting Spammer on Micro-blogs Base on Fuzzy Multi-class SVM

机译:基于模糊多类支持向量机的微博垃圾邮件检测

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Micro-blog has become an important information dissemination and exchange platform in people's social lives. Massive micro-blog data contains a large number of valuable information, but the micro-blog platform appears to have a lot of spam behavior problems in recent years; behavior consistent with spammers and spam micro-blogs. The spam not only affects the impact of micro-blog's data mining and decision analysis, but also seriously affects the healthy development of micro-blog platform and user experience. In this paper, a new spammer detection method based on fuzzy multi-class support vector machines (FMCSVM) is proposed in micro-blog, it combines the SVM multi-class classifier with the fuzzy mathematics theory in spammer detection. Current researches on micro-blog spammers is to analyze the characteristics of the global spammers, so that the strength of these analyses is not enough, and these researches lack the feature analysis for a certain type spammer. As a result, this will enable the spammer to escape the spam detection system. In this paper, we divide spammers into three categories by analyzing the features of micro-blog spammers, and then construct one-versus-rest SVM multi-class classifier. The fuzzy clustering method is used to deal with the mixed samples generated by the multi class classifier, and the combination classifier is obtained, which improves the detection accuracy.
机译:微博已经成为人们社会生活中重要的信息传播和交流平台。大量的微博客数据包含大量有价值的信息,但近年来,微博客平台似乎存在许多垃圾邮件行为问题;与垃圾邮件发送者和垃圾邮件微博一致的行为。垃圾邮件不仅影响微博数据挖掘和决策分析的影响,而且严重影响微博平台的健康发展和用户体验。本文在微博中提出了一种基于模糊多类支持向量机(FMCSVM)的垃圾邮件发送者检测新方法,该方法将支持向量机多类分类器与模糊数学理论相结合,用于垃圾邮件发送者的检测。目前对微博垃圾邮件发送者的研究只是为了分析全球垃圾邮件发送者的特征,以至于这些分析的强度还不够,而且这些研究还缺乏针对特定类型垃圾邮件发送者的特征分析。结果,这将使垃圾邮件发送者能够逃脱垃圾邮件检测系统。本文通过分析微博垃圾邮件发送者的特征,将垃圾邮件发送者分为三类,然后构造了一个休息型SVM多分类器。采用模糊聚类方法对多类分类器产生的混合样本进行处理,得到组合分类器,提高了检测精度。

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