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Robust Multi-Network Clustering via Joint Cross-Domain Cluster Alignment

机译:通过联合跨域群集对齐稳健的多网络聚类

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Network clustering is an important problem that has recently drawn a lot of attentions. Most existing work focuses on clustering nodes within a single network. In many applications, however, there exist multiple related networks, in which each network may be constructed from a different domain and instances in one domain may be related to instances in other domains. In this paper, we propose a robust algorithm, MCA, for multi-network clustering that takes into account cross-domain relationships between instances. MCA has several advantages over the existing single network clustering methods. First, it is able to detect associations between clusters from different domains, which, however, is not addressed by any existing methods. Second, it achieves more consistent clustering results on multiple networks by leveraging the duality between clustering individual networks and inferring cross-network cluster alignment. Finally, it provides a multi-network clustering solution that is more robust to noise and errors. We perform extensive experiments on a variety of real and synthetic networks to demonstrate the effectiveness and efficiency of MCA.
机译:网络聚类是最近引起了大量关注的重要问题。大多数现有工作侧重于单个网络中的聚类节点。然而,在许多应用中,存在多个相关网络,其中每个网络可以从不同的域构造,并且一个域中的实例可以与其他域中的实例相关。在本文中,我们提出了一种强大的算法MCA,用于多网络聚类,该群体考虑了实例之间的跨域关系。 MCA与现有的单一网络聚类方法有几个优点。首先,它能够检测来自不同域之间的簇之间的关联,但是,任何现有方法都没有解决这些域之间的关联。其次,它通过利用聚类各个网络之间的二元性和推断跨网络集群对齐来实现多个网络的更一致的聚类结果。最后,它提供了一个多网络聚类解决方案,对噪声和错误更强大。我们对各种实际和合成网络进行广泛的实验,以证明MCA的有效性和效率。

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