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A survey of data mining and social network analysis based anomaly detection techniques

机译:基于异常检测技术的数据挖掘和社交网络分析研究

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With the increasing trend of online social networks in different domains, social network analysis has recently become the center of research. Online Social Networks (OSNs) have fetched the interest of researchers for their analysis of usage as well as detection of abnormal activities. Anomalous activities in social networks represent unusual and illegal activities exhibiting different behaviors than others present in the same structure. This paper discusses different types of anomalies and their novel categorization based on various characteristics. A review of number of techniques for preventing and detecting anomalies along with underlying assumptions and reasons for the presence of such anomalies is covered in this paper. The paper presents a review of number of data mining approaches used to detect anomalies. A special reference is made to the analysis of social network centric anomaly detection techniques which are broadly classified as behavior based, structure based and spectral based. Each one of this classification further incorporates number of techniques which are discussed in the paper. The paper has been concluded with different future directions and areas of research that could be addressed and worked upon.
机译:随着不同领域在线社交网络的发展趋势,社交网络分析最近成为研究的中心。在线社交网络(OSN)引起了研究人员对其使用情况的分析以及异常活动的检测的兴趣。社交网络中的异常活动表示异常活动和非法活动,它们表现出与同一结构中的其他行为不同的行为。本文讨论了不同类型的异常及其基于各种特征的新颖分类。本文涵盖了对用于预防和检测异常的技术的数量以及潜在的异常的假设和原因的综述。本文介绍了用于检测异常的多种数据挖掘方法。特别分析了以社交网络为中心的异常检测技术,这些技术大致分为基于行为,基于结构和基于频谱的技术。此分类中的每一个都进一步结合了本文中讨论的许多技术。本文以不同的未来方向和可以解决和研究的研究领域作了总结。

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