基于合成相似度的光谱聚类集成

Tong Zhang, Binghan Liu
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引用次数: 2

摘要

为了提高聚类性能,本文提出了一种基于合成相似度的谱聚类集成算法(SCEBSS)。采用多种向量相似度度量方法,生成不同对象的相似度矩阵。每个相似矩阵被赋予一个权重,然后作为一个合成相似矩阵相加。采用谱聚类算法对合成的相似矩阵进行聚类,然后采用归一化互信息(NMI)作为评价函数的粒子群算法对相似矩阵的权重进行优化,得到最佳聚类。与其他相关聚类方案的比较表明,SCEBSS在数据聚类任务中具有更好的性能和对噪声的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectral Clustering Ensemble Based on Synthetic Similarity
In this paper, a spectral clustering ensemble algorithm based on synthetic similarity (SCEBSS) is proposed to improve the performance of clustering. Multiple methods of vector similarity measurement are adopted to produce diverse similarity matrices of objects. Every similarity matrix is given a weight and then added as a synthetic similarity matrix. A spectral clustering algorithm is employed on the synthetic similarity matrix, and then a particle swarm optimization using normalized mutual information (NMI) as evaluation function is adopted to optimize the weights of similarity matrices to obtain the best clusters. Comparisons with other related clustering schemes demonstrate the better performance of SCEBSS in clustering data tasks and robustness to noise.
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