An embedding approach to anomaly detection

Renjun Hu, C. Aggarwal, Shuai Ma, J. Huai
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引用次数: 59

Abstract

Network anomaly detection has become very popular in recent years because of the importance of discovering key regions of structural inconsistency in the network. In addition to application-specific information carried by anomalies, the presence of such structural inconsistency is often an impediment to the effective application of data mining algorithms such as community detection and classification. In this paper, we study the problem of detecting structurally inconsistent nodes that connect to a number of diverse influential communities in large social networks. We show that the use of a network embedding approach, together with a novel dimension reduction technique, is an effective tool to discover such structural inconsistencies. We also experimentally show that the detection of such anomalous nodes has significant applications: one is the specific use of detected anomalies, and the other is the improvement of the effectiveness of community detection.
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异常检测的嵌入方法
由于发现网络结构不一致的关键区域的重要性,网络异常检测近年来变得非常流行。除了异常所携带的特定于应用程序的信息外,这种结构不一致的存在通常会阻碍社区检测和分类等数据挖掘算法的有效应用。在本文中,我们研究了在大型社会网络中连接到许多不同的有影响力的社区的结构不一致节点的检测问题。我们表明,使用网络嵌入方法,以及一种新的降维技术,是发现这种结构不一致的有效工具。我们还通过实验表明,这种异常节点的检测具有重要的应用:一是对检测到的异常进行具体利用,二是提高社区检测的有效性。
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