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Group-wise sufficient dimension reduction with principal fitted components

机译:使用主要装配的组件进行逐组充分的尺寸缩减

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摘要

Sufficient dimension reduction methodologies in regressions of Y on a p-variate X aim at obtaining a reduction , that retains all the regression information of Y in X. When the predictors fall naturally into a number of known groups or domains, it has been established that exploiting the grouping information often leads to more effective sufficient dimension reduction of the predictors. In this article, we consider group-wise sufficient dimension reduction based on principal fitted components, when the grouping information is unknown. Principal fitted components methodology is coupled with an agglomerative clustering procedure to identify a suitable grouping structure. Simulations and real data analysis demonstrate that the group-wise principal fitted components sufficient dimension reduction is superior to the standard principal fitted components and to general sufficient dimension reduction methods.
机译:在p变量X上对Y进行回归的足够的维数缩减方法旨在获得约简,保留X中Y的所有回归信息。当预测变量自然地落入许多已知的组或域中时,已经确定利用分组信息通常会导致更有效地充分减少预测变量的维数。在本文中,当分组信息未知时,我们考虑基于主要装配组件的逐组充分降维。主装配组件方法与聚集聚类过程相结合,以识别合适的分组结构。仿真和实际数据分析表明,按组分解的主要装配零件具有足够的尺寸缩减能力,优于标准的主要装配零件和通用的足够尺寸缩减方法。

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