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Detecting covert communities in multi-layer networks: A network embedding approach

机译:检测多层网络中的隐蔽社区:网络嵌入方法

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摘要

Graph clustering is a fundamental task to discover community ties in multi-layer networks. In this paper, we propose a network embedding technique to find covert communities in multi-layer dark networks using a Log-BiLinear (LBL) approach. Recent works on graph clustering using network embedding have focused on new ways of learning representations of nodes and relations, upon which a classic clustering method is then used to identify the communities (clusters). However, these embedding approach does not yield good and accurate communities from the clustering task. Hence, we address this issue with a sequence-based network embedding technique on a multi-layer network. Our proposal learns structural representations of nodes and relations simultaneously by capturing the position of a given node within a set of neighboring anchor-set, and the type of connections between nodes in the anchor-set. To find the clusters (communities), clustering centroids are also learned as the representations of nodes and relations are extracted. Our solution is well-suited to detecting covert communities, such as terrorist networks. In our experiments on three real-world terrorist datasets and one synthetic network, our approach is found to deliver a higher level of accuracy in detecting covert communities compared with six baseline methods.
机译:图形群集是在多层网络中发现社区关系的基本任务。在本文中,我们提出了一种网络嵌入技术,使用Log-Bilinear(LBL)方法在多层暗网络中找到隐蔽社区。使用网络嵌入的图形聚类的最新作品专注于节点和关系的新学习方式,然后使用经典聚类方法来识别社区(集群)。但是,这些嵌入方法不会从聚类任务产生良好和准确的社区。因此,我们用基于序列的网络嵌入技术在多层网络上解决了这个问题。我们的提议通过捕获一组相邻锚定集中的给定节点的位置以及锚定集中的节点之间的连接类型来了解节点的结构表示和同时的关系。要查找集群(社区),也会学习群集质心,因为提取节点和关系的表示。我们的解决方案非常适合检测秘密社区,例如恐怖网络。在我们对三个现实世界恐怖数据集和一个合成网络的实验中,我们的方法被发现在与六种基线方法相比,在检测隐蔽社区中提供更高水平的准确性。

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