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Cluster validation in k-Means clustering of mixed databases based on principal component analysis

机译:基于主成分分析的混合数据库k-Means聚类中的聚类验证

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摘要

Considering the close relation between k-Means clustering and principal component analysis (PCA), a cluster validation approach for k-Means partitions was proposed using analytical solutions of PCA. In this paper, the validation approach is further extended for handling mixed databases composed of not only numerical observations but also categorical observations. In the new validation approach for k-Means clustering of mixed databases, PCA solutions are given by considering optimal scaling of category observations, and the plausibility of k-Means solutions are evaluated by calculating deviations from the PCA solutions after Procrustean rotation.
机译:考虑到k-Means聚类与主成分分析(PCA)之间的紧密联系,提出了一种使用PCA的解析解对k-Means分区进行聚类验证的方法。在本文中,验证方法被进一步扩展到处理混合的数据库,该混合的数据库不仅包括数值观测值,而且还包括分类观测值。在用于混合数据库的k均值聚类的新验证方法中,通过考虑类别观测值的最佳缩放比例给出PCA解,并通过计算Procrustean旋转后与PCA的偏差来评估k均值解的合理性。

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