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Semi-supervised community detection on attributed networks using non-negative matrix tri-factorization with node popularity

机译:使用Node流行度的非负矩阵三分化对归属网络的半监督社区检测

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摘要

The World Wide Web generates more and more data with links and node contents, which are always modeled as attributed networks. The identification of network communities plays an important role for people to understand and utilize the semantic functions of the data. A few methods based on non-negative matrix factorization (NMF) have been proposed to detect community structure with semantic information in attributed networks. However, previous methods have not modeled some key factors (which affect the link generating process together), including prior information, the heterogeneity of node degree, as well as the interactions among communities. The three factors have been demonstrated to primarily affect the results. In this paper, we propose a semi-supervised community detection method on attributed networks by simultaneously considering these three factors. First, a semi-supervised non-negative matrix tri-factorization model with node popularity (i.e., PSSNMTF) is designed to detect communities on the topology of the network. And then node contents are integrated into the PSSNMTF model to find the semantic communities more accurately, namely PSSNMTFC. Parameters of the PSSNMTFC model is estimated by using the gradient descent method. Experiments on some real and artificial networks illustrate that our new method is superior over some related state-of-the-art methods in terms of accuracy.
机译:万维网使用链接和节点内容生成越来越多的数据,它们始终以属性网络为模拟。网络社区的识别对人们来说扮演重要的作用,以了解和利用数据的语义功能。已经提出了一种基于非负矩阵分解(NMF)的一些方法来检测具有归属网络中的语义信息的社区结构。然而,以前的方法没有建模一些关键因素(影响链路生成过程),包括先前信息,节点度的异质性,以及社区之间的相互作用。已经证明了三种因素主要影响结果。在本文中,我们通过同时考虑到这三个因素,提出了一个关于归属网络的半监督社区检测方法。首先,具有节点流行度(即PSSNMTF)的半监控非负矩阵三分化模型旨在检测网络拓扑结构的社区。然后节点内容集成到PSSNMTF模型中,以更准确地找到语义社区,即PSSNMTFC。通过使用梯度下降方法估计PSSNMTFC模型的参数。关于一些真实和人造网络的实验说明了在准确性方面,我们的新方法优于一些相关的最先进的方法。

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