基于模块化最大化的群落检测光谱聚类方法

Chen-Kun Tsung, H. Ho, Shengkai Chou, Janching Lin, Sing-Ling Lee
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引用次数: 15

摘要

模块化是广泛使用的群体检测目标函数,有很多基于模块化最大化的算法。前导特征向量法是其中一种通过选择第一个特征向量作为划分结果来实现模块化最大化的方法。为了深入分析其他特征向量提供的信息,可以将模块化最大化问题转化为向量划分问题。提出了一种求无重叠顶点向量集的方法,使群体向量的范数二次和最大化。我们观察了网络顶点向量的空间分布,发现了两个现象。首先,用一个角度将属于不同群落的顶点向量分开。其次,度较大的节点对应范数较大的顶点向量。基于这两种现象,我们设计了一种启发式社区检测算法。当网络具有较弱的群体结构时,考虑过划分问题。实验结果表明,该方法比其他方法具有更高的精度。
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A Spectral Clustering Approach Based on Modularity Maximization for Community Detection Problem
Modularity is widely-used objective function to detect communities and there are lots of algorithms based on modularity maximization. The leading eigenvector method is one of them where modularity is maximized by choosing the first eigenvector as partition result. To analyze in depth the information provided by other eigenvectors, modularity maximization could be transformed to vector partitioning problem. This paper proposes a method to find non-overlapping vertex vector sets so as to maximize the quadratic sum of norms of community vectors. We observe spatial distribution of the vertex vectors of networks and then discover two phenomenons. First, the vertex vectors belong to different communities are separated by an angle. Second, the node with a larger degree would correspond to a vertex vector with a larger norm. Based on these two phenomena, we design a heuristic community detection algorithm. When a network with weaker community structure, the over-partition problem is considered. The experiment results show that the proposed solution provides higher accuracy than other solutions.
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