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Hierarchical and Non-Hierarchical Medoid Clustering Using Asymmetric Similarity Measures

机译:使用非对称相似性度量的分层和非分层Medoid聚类

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Medoid clustering frequently gives better interpretation than the K-means clustering, since a unique object is the representative element of a cluster. Moreover the method of medoids can be applied to non-metric cases such as weighted graphs that arise in analyzing SNS (Social Networking Service) networks. A fundamental problem in clustering is that asymmetric similarity measures are difficult to handle, while relations are asymmetric in SNS user groups. In this paper we consider K-medoids clustering for asymmetric graphs in which a cluster has two different centers with outgoing directions and incoming directions. Moreover two-stage agglomerative hierarchical clustering is studied in which the first stage is a one-pass K-medoids and the second stage uses an agglomerative algorithm. These methods are applied to artificial and real data sets.
机译:Medoid聚类通常比K-means聚类提供更好的解释,因为唯一的对象是聚类的代表元素。此外,类固醇的方法可以应用于非度量情况,例如在分析SNS(社交网络服务)网络时出现的加权图。群集中的一个基本问题是,非对称相似性度量难以处理,而SNS用户组中的关系非对称。在本文中,我们考虑非对称图的K-medoids聚类,其中一个聚类具有两个不同的中心,分别具有出射方向和入射方向。此外,还研究了两阶段的聚类分层聚类,其中第一阶段是单程K-medoids,第二阶段使用聚结算法。这些方法适用于人工数据集和真实数据集。

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