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Cluster-based network proximities for arbitrary nodal subsets

机译:任意节点子集的基于群集的网络邻近性

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摘要

The concept of a cluster or community in a network context has been of considerable interest in a variety of settings in recent years. In this paper, employing random walks and geodesic distance, we introduce a unified measure of cluster-based proximity between nodes, relative to a given subset of interest. The inherent simplicity and informativeness of the approach could make it of value to researchers in a variety of scientific fields. Applicability is demonstrated via application to clustering for a number of existent data sets (including multipartite networks). We view community detection (i.e. when the full set of network nodes is considered) as simply the limiting instance of clustering (for arbitrary subsets). This perspective should add to the dialogue on what constitutes a cluster or community within a network. In regards to health-relevant attributes in social networks, identification of clusters of individuals with similar attributes can support targeting of collective interventions. The method performs well in comparisons with other approaches, based on comparative measures such as NMI and ARI.
机译:近年来,在各种情况下,网络环境中的群集或社区概念引起了人们的极大兴趣。在本文中,我们利用随机游走和测地距离,介绍了相对于给定关注子集的节点之间基于簇的邻近度的统一度量。这种方法固有的简单性和信息性使其对各种科学领域的研究人员都具有价值。通过适用于许多现有数据集(包括多方网络)的聚类,证明了其适用性。我们将社区检测(即在考虑整个网络节点集的情况下)视为简单的集群限制实例(针对任意子集)。这种观点应该增加关于什么构成网络中的集群或社区的对话。关于社交网络中与健康相关的属性,识别具有相似属性的个人集群可以支持针对集体干预措施。与NMI和ARI等比较指标相比,该方法与其他方法相比效果很好。

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