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A Community-Aware Approach for Identifying Node Anomalies in Complex Networks

机译:一种识别复杂网络中节点异常的社区意识方法

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The overwhelming amount of network data that is nowadays available, leads to an increased demand for techniques that automatically identify anomalous nodes. Examples are network intruders in physical networks or spammers spreading unwanted advertisements in online social networks. Existing methods typically identify network anomalies from a local perspective, only considering metrics related to a node and connections in its direct neighborhood. However, such methods often miss anomalies as they overlook crucial distortions of the network structure that are only visible at the macro level. To solve these problems, in this paper, the CADA algorithm is proposed, which identifies irregular nodes from a global perspective. It does so by measuring the extent to which a node connects to man y different communities while not obviously belonging to one community itself. Results on synthetic and real-world data show that the incorporation of the community aspect is of critical importance, as our algorithm significantly outperforms previously suggested techniques. In addition, it scales well to larger networks of hundreds of thousands of nodes and millions of links. Moreover, the proposed method is parameter-free, enabling the hassle-free identification of anomalies in a wide variety of application domains.
机译:当今可用的大量网络数据导致对自动识别异常节点的技术的需求增加。例如物理网络中的网络入侵者或在在线社交网络中散布有害广告的垃圾邮件发送者。现有方法通常从本地角度识别网络异常,仅考虑与节点及其直接邻域中的连接有关的度量。但是,这些方法常常会忽略异常,因为它们忽略了仅在宏级别可见的网络结构的严重失真。为了解决这些问题,本文提出了CADA算法,该算法从全局角度识别不规则节点。它通过测量节点连接到许多不同社区(而显然不属于一个社区本身)的程度来做到这一点。综合和真实数据的结果表明,社区方面的整合至关重要,因为我们的算法大大优于先前提出的技术。此外,它可以很好地扩展到具有数十万个节点和数百万个链接的大型网络。而且,所提出的方法是无参数的,从而能够在各种应用领域中轻松地识别异常。

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