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A clustering approach to interpretable principal components

机译:可解释主要成分的聚类方法

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A new method for constructing interpretable principal components is proposed. The method first clusters the variables, and then interpretable (sparse) components are constructed from the correlation matrices of the clustered variables. For the first step of the method, a new weighted-variances method for clustering variables is proposed. It reflects the nature of the problem that the interpretable components should maximize the explained variance and thus provide sparse dimension reduction. An important feature of the new clustering procedure is that the optimal number of clusters (and components) can be determined in a non-subjective manner. The new method is illustrated using well-known simulated and real data sets. It clearly outperforms many existing methods for sparse principal component analysis in terms of both explained variance and sparseness.
机译:提出了一种构造可解释主成分的新方法。该方法首先对变量进行聚类,然后根据聚类变量的相关矩阵构造可解释(稀疏)的分量。对于该方法的第一步,提出了一种用于对变量进行聚类的新的加权方差方法。它反映了问题的本质,即可解释的组件应最大化所解释的方差,从而提供稀疏的维度缩减。新的聚类过程的一个重要特征是,可以以非主观的方式确定最佳的聚类(和组件)数量。使用众所周知的模拟和真实数据集说明了新方法。就解释方差和稀疏性而言,它明显优于许多现有的稀疏主成分分析方法。

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