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A spectral method for bipartizing a network and detecting a large anti-community

机译:一种双分层网络和检测大型反社区的光谱方法

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Relations between discrete quantities such as people, genes, or streets can be described by networks, which consist of nodes that are connected by edges. Network analysis aims to identify important nodes in a network and to uncover structural properties of a network. A network is said to be bipartite if its nodes can be subdivided into two nonempty sets such that there are no edges between nodes in the same set. It is a difficult task to determine the closest bipartite network to a given network. This paper describes how a given network can be approximated by a bipartite one by solving a sequence of fairly simple optimization problems. The algorithm also produces a node permutation which makes the possible bipartite nature of the initial adjacency matrix evident, and identifies the two sets of nodes. We finally show how the same procedure can be used to detect the presence of a large anti-community in a network and to identify it. (C) 2019 Elsevier B.V. All rights reserved.
机译:可以通过网络描述离散量(例如人),基因或街道之间的关系,网络由边缘连接的节点组成。 网络分析旨在识别网络中的重要节点并揭示网络的结构特性。 如果可以将其节点细分为两个非空的组,则据说网络是双标,使得同一组中的节点之间没有边缘。 将最接近的二分网络确定为给定网络是一项艰巨的任务。 本文介绍了通过求解一系列相当简单的优化问题的二分之一,如何近似网络的方式。 该算法还产生节点置换,这使得初始邻接矩阵的可能的二分性质是明显的,并识别两组节点。 我们终于展示了如何使用相同的程序来检测网络中的大型反社区的存在并识别它。 (c)2019 Elsevier B.v.保留所有权利。

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