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Dense Subgraph Extraction with Application to Community Detection

机译:密集子图提取及其在社区检测中的应用

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This paper presents a method for identifying a set of dense subgraphs of a given sparse graph. Within the main applications of this ȁC;dense subgraph problem,ȁD; the dense subgraphs are interpreted as communities, as in, e.g., social networks. The problem of identifying dense subgraphs helps analyze graph structures and complex networks and it is known to be challenging. It bears some similarities with the problem of reordering/blocking matrices in sparse matrix techniques. We exploit this link and adapt the idea of recognizing matrix column similarities, in order to compute a partial clustering of the vertices in a graph, where each cluster represents a dense subgraph. In contrast to existing subgraph extraction techniques which are based on a complete clustering of the graph nodes, the proposed algorithm takes into account the fact that not every participating node in the network needs to belong to a community. Another advantage is that the method does not require to specify the number of clusters; this number is usually not known in advance and is difficult to estimate. The computational process is very efficient, and the effectiveness of the proposed method is demonstrated in a few real-life examples.
机译:本文提出了一种用于识别给定稀疏图的一组密集子图的方法。在此; C的主要应用内;密集子图问题ȁD;密集子图被解释为社区,例如在社交网络中。识别密集子图的问题有助于分析图结构和复杂的网络,众所周知这具有挑战性。它与稀疏矩阵技术中的矩阵重新排序/分块问题有一些相似之处。我们利用此链接并采用识别矩阵列相似性的思想,以便计算图中顶点的部分聚类,其中每个聚类代表一个密集的子图。与基于图节点的完整聚类的现有子图提取技术相反,所提出的算法考虑了以下事实:并非网络中的每个参与节点都需要属于一个社区。另一个优点是该方法不需要指定簇的数量。这个数字通常是事先未知的,很难估计。计算过程非常有效,并且在一些实际示例中证明了该方法的有效性。

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