自分组多网络集群。

Jingchao Ni, Wei Cheng, Wei Fan, Xiang Zhang
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引用次数: 8

摘要

多个网络的联合聚类已被证明比单独对单个网络进行聚类更准确。为了实现多网络联合聚类,人们开发了多种多视图、多域网络聚类方法。这些方法通常假设存在所有网络共享的公共聚类结构,并且不同的网络可以在这个底层聚类结构上提供补充信息。然而,这种假设过于严格,无法适用于许多新兴的现实应用程序,因为在这些应用程序中,多个网络具有不同的数据分布。更普遍的是,所考虑的网络属于不同的底层群体。只有同一底层组中的网络共享相似的聚类结构。通过以不同的方式考虑这些组,可以获得更好的集群性能。因此,理想的方法应该能够自动检测网络组,以便同一组中的网络共享一个共同的聚类结构。为了解决这个问题,我们提出了一种新的方法ComClus,同时对多个网络进行分组和聚类。comcluus将节点集群视为网络的特征,并利用它们来区分不同的网络组。网络分组和网络聚类在学习过程中是相互耦合、相互促进的。在各种合成和真实数据集上进行了广泛的实验评估,证明了我们的方法的有效性。
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Self-Grouping Multi-Network Clustering.

Joint clustering of multiple networks has been shown to be more accurate than performing clustering on individual networks separately. Many multi-view and multi-domain network clustering methods have been developed for joint multi-network clustering. These methods typically assume there is a common clustering structure shared by all networks, and different networks can provide complementary information on this underlying clustering structure. However, this assumption is too strict to hold in many emerging real-life applications, where multiple networks have diverse data distributions. More popularly, the networks in consideration belong to different underlying groups. Only networks in the same underlying group share similar clustering structures. Better clustering performance can be achieved by considering such groups differently. As a result, an ideal method should be able to automatically detect network groups so that networks in the same group share a common clustering structure. To address this problem, we propose a novel method, ComClus, to simultaneously group and cluster multiple networks. ComClus treats node clusters as features of networks and uses them to differentiate different network groups. Network grouping and clustering are coupled and mutually enhanced during the learning process. Extensive experimental evaluation on a variety of synthetic and real datasets demonstrates the effectiveness of our method.

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