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Simultaneous Method of Orthogonal Non-metric Non-negative Matrix Factorization and Constrained Non-hierarchical Clustering

机译:正交非度量非负矩阵分组和约束非分层聚类的同时方法

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摘要

For multivariate categorical data, it is important to detect both clustering structures and low dimensions such that clusters are discriminated. This is because it is easy to interpret the features of clusters through the estimated low dimensions. It is sure that these existing methods for dimensional reduction clustering are useful to achieve such purpose; however, the interpretation sometimes becomes complicated due to the sign of the estimated parameters. Thus, we propose new dimensional reduction clustering with non-negativity constraints for all parameters. The proposed method has several advantages. First, when the features of clusters are interpreted, it is easier to interpret the clusters since effects of sign should not be considered. In addition, from the non-negativity and orthogonality constraints, the estimated components become perfect simple structure, which is interpretable descriptions. Second, we showed that the clustering results are not inferior to these existing methods through the simulations, although the constraints for the proposed method are strong.
机译:对于多变量分类数据,重要的是要检测聚类结构和低维度,使得群集被区别。这是因为很容易通过估计的低维度解释群集的特征。确保这些现有的维度减少聚类方法可用于实现此类目的;然而,由于估计参数的符号,解释有时会变得复杂。因此,我们提出了对所有参数的非负性约束的新维度缩减聚类。所提出的方法具有几个优点。首先,当解释群集的特征时,可以更容易地解释群集,因为不应考虑符号的效果。另外,从非消极性和正交的约束,估计的组件变得完美的简单结构,这是可解释的描述。其次,我们认为聚类结果通过模拟,群化结果不逊于这些现有方法,尽管所提出的方法的约束很强。

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