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Neighborhood Graph Embedding for Nodes Clustering of Social Network

机译:社交网络节点聚类的邻域图嵌入

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Graph embedding is an important dimension reduction method for high-dimensional data. In this paper, a neighborhood graph embedding algorithm is proposed and it is applied in data clustering. Different from the traditional graph embedding algorithms, a dependence degree of node is defined and it represents the dependence of two nodes; the adjacency matrix of graph is determined by dependence degree. Then a new graph embedding is proposed. After transformation matrix is solved, the weight of each attribute can also be determined from transformation matrix. Finally, the data is partitioned into clusters by clustering algorithm with weighting distance. The proposed algorithm and comparison algorithms are executed on the real social network data sets. The experimental results show that the proposed algorithm outperformances the comparison algorithms and it proves that the proposed algorithm is effective for data clustering in social network.
机译:图形嵌入是高维数据的一种重要的降维方法。提出了一种邻域图嵌入算法,并将其应用于数据聚类中。与传统的图嵌入算法不同的是,定义了节点的依存度,它表示两个节点的依存度。图的邻接矩阵由依赖度决定。然后提出了一种新的图嵌入方法。求解变换矩阵后,还可以从变换矩阵确定每个属性的权重。最后,通过具有加权距离的聚类算法将数据划分为聚类。所提出的算法和比较算法是在真实的社交网络数据集上执行的。实验结果表明,该算法优于比较算法,证明了该算法对于社交网络中的数据聚类是有效的。

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