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Estimating central subspaces via inverse third moments

机译:通过逆三阶矩估计中心子空间

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Modern graphical tools have enhanced our ability-to learn many things from data directly. In recent years, dimension reduction has proven to be an effective tool for generating low-dimensional summary plots without appreciable loss of information. Some well-known inverse regression methods for dimension reduction such as sliced inverse regression (Li; 1991) and sliced average variance estimation (Cook & Weisberg, 1991) have been developed to estimate summary plots for regression and discriminant analysis; In this paper, we suggest a new method that makes use of inverse third moments. This method can find structure beyond that found by sliced inverse regression and sliced average variance estimation, particularly regression mixtures. Illustrative examples are presented. [References: 22]
机译:现代图形工具增强了我们从数据中直接学习很多东西的能力。近年来,降维已被证明是生成低维摘要图而没有明显信息丢失的有效工具。已经开发了一些众所周知的用于降维的逆回归方法,例如切片逆回归(Li; 1991)和切片平均方差估计(Cook&Weisberg,1991),以估计汇总图以进行回归和判别分析。在本文中,我们提出了一种利用逆三阶矩的新方法。该方法可以找到除通过切片逆回归和切片平均方差估计所发现的结构以外的结构,尤其是回归混合。给出了说明性示例。 [参考:22]

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