基于pca引导的k-Means和PC分数的procrustean变换的k-Means聚类中的聚类验证

Tomohiro Matsui, Katsuhiro Honda, Chi-Hyon Oh, A. Notsu, H. Ichihashi
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引用次数: 4

摘要

pca引导的k-Means是一种分析估计k-Means聚类松弛解的技术,而导出的聚类指标是一个旋转解,旋转矩阵不能显式估计。然后,采用连通矩阵中样本排序的可视化方法对聚类结构进行可视化访问。本文介绍了一种利用主成分分数的Procrustean变换估计旋转矩阵的技术,以便从k-Means得到的多个解中选择最优解,并提出了一种计算k-Means解与重构的隶属度指标矩阵之间偏差的聚类验证测度。
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Cluster validation in k-Means clustering based on PCA-guided k-Means and procrustean transformation of PC scores
PCA-guided k-Means is a technique for analytically estimating a relaxed solution for k-Means clustering, while the derived cluster indicator is a rotated solution and the rotation matrix cannot be explicitly estimated. Then, an approach such as visualization by ordering of samples in connectivity matrices is applied for visually accessing cluster structures. This paper introduces a technique for estimating a rotation matrix by Procrustean transformation of principal component scores in order to select the optimal solution from multiple solutions derived by k-Means, and proposes a cluster validation measure calculating the deviation between k-Means solutions and a re-constructed membership indicator matrix.
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