A community detection algorithm based on multi-domain adaptive spectral clustering

You-Hong Li, Yin-wei Zhan, Xue-Jun Wang
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引用次数: 3

Abstract

At present in most field's data sets, spectral clustering community detection algorithm is difficult to predict the number of clustering problems, this paper proposes a community detection algorithm based on multi-domain adaptive spectral clustering (MDASC). Firstly based on the local node density composition, combined with graph edge-betweenness structural similarity matrix, normalized spectral clustering, got the biggest feature dimensions k value, so as to achieve the purpose of automatic identification number of the cluster, and finally re-use k-means classical clustering algorithm to cluster the feature vector space. Experiments show that compared with the traditional spectral clustering community detection algorithm, MDASC can construct a more efficient similarity matrix, simulation community structure is more close to the real, can adapt to all kinds of field sample data.
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基于多域自适应光谱聚类的群体检测算法
目前在大多数领域的数据集中,光谱聚类社团检测算法存在难以预测聚类数量的问题,本文提出了一种基于多域自适应光谱聚类(MDASC)的社团检测算法。首先基于局部节点密度组成,结合图边间结构相似度矩阵,进行归一化谱聚类,得到最大特征维数k值,从而达到自动识别聚类数的目的,最后再利用k-means经典聚类算法对特征向量空间进行聚类。实验表明,与传统的光谱聚类群落检测算法相比,MDASC能够构建更高效的相似矩阵,仿真群落结构更接近真实,能够适应各种野外样本数据。
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