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Symmetric Non-negative Matrix Factorization Based Link Partition Method for Overlapping Community Detection

机译:基于对称非负矩阵分解的链路分割方法

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Partitioning links rather than nodes is effective in overlapping community detection (OCD) on complex networks. However, it consumes high CPU and memory overheads because the volume of links is huge especially when the network is rather complex. In this paper, we proposes a symmetric non-negative matrix factorization (SNMF) based link partition method called SNMF-Link to overcome this deficiency. In particular, SNMF-Link represents data in a lower-dimensional space spanned by the node-link incidence matrix. By solving a lighter SNMF problem, SNMF-Link learns the clustering indicators of each links. Since traditional multiplicative update rule (MUR) based optimization algorithm for SNMF suffers from slow convergence, we applied the augmented Lagrangian method (ALM) to efficiently optimize SNMF. Experimental results show that SNMF-Link is much more efficient than the representative clustering algorithms without reducing the OCD performance.
机译:在复杂网络上,对链路而不是节点进行分区可以有效地重叠社区检测(OCD)。但是,由于链接数量巨大,特别是在网络相当复杂的情况下,它会消耗大量的CPU和内存开销。在本文中,我们提出了一种基于对称非负矩阵分解(SNMF)的链路分区方法,称为SNMF-Link,以克服这一缺陷。特别地,SNMF-Link表示由节点链接入射矩阵跨越的低维空间中的数据。通过解决一个较轻的SNMF问题,SNMF-Link可以了解每个链接的聚类指标。由于针对SNMF的基于传统乘法更新规则(MUR)的优化算法存在收敛缓慢的问题,因此我们应用了增强拉格朗日方法(ALM)来有效地优化SNMF。实验结果表明,在不降低OCD性能的情况下,SNMF-Link比具有代表性的聚类算法效率更高。

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