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Co-Association Matrix-Based Multi-Layer Fusion for Community Detection in Attributed Networks

机译:基于协同矩阵的多层融合在属性网络中的社区检测

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Community detection is a challenging task in attributed networks, due to the data inconsistency between network topological structure and node attributes. The problem of how to effectively and robustly fuse multi-source heterogeneous data plays an important role in community detection algorithms. Although some algorithms taking both topological structure and node attributes into account have been proposed in recent years, the fusion strategy is simple and usually adopts the linear combination method. As a consequence of this, the detected community structure is vulnerable to small variations of the input data. In order to overcome this challenge, we develop a novel two-layer representation to capture the latent knowledge from both topological structure and node attributes in attributed networks. Then, we propose a weighted co-association matrix-based fusion algorithm (WCMFA) to detect the inherent community structure in attributed networks by using multi-layer fusion strategies. It extends the community detection method from a single-view to a multi-view style, which is consistent with the thinking model of human beings. Experiments show that our method is superior to the state-of-the-art community detection algorithms for attributed networks.
机译:由于网络拓扑结构和节点属性之间的数据不一致,社区检测在属性网络中是一项具有挑战性的任务。如何有效和强大地融合多源异构数据的问题在社区检测算法中起着重要作用。尽管近年来提出了一些兼顾拓扑结构和节点属性的算法,但融合策略简单,通常采用线性组合方法。结果,所检测到的社区结构容易受到输入数据的微小变化的影响。为了克服这一挑战,我们开发了一种新颖的两层表示形式,以从拓扑结构和属性网络中的节点属性中捕获潜在知识。然后,我们提出了一种基于加权关联矩阵的融合算法(WCMFA),通过使用多层融合策略来检测属性网络中的固有社区结构。它将社区检测方法从单视图方式扩展到了多视图方式,这与人类的思维模式是一致的。实验表明,我们的方法优于属性网络的最新社区检测算法。

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