Conditional variance estimator for sufficient dimension reduction

L. Fertl, E. Bura
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引用次数: 5

Abstract

Conditional Variance Estimation (CVE) is a novel sufficient dimension reduction (SDR) method for additive error regressions with continuous predictors and link function. It operates under the assumption that the predictors can be replaced by a lower dimensional projection without loss of information. In contrast to the majority of moment based sufficient dimension reduction methods, Conditional Variance Estimation is fully data driven, does not require the restrictive linearity and constant variance conditions, and is not based on inverse regression. CVE is shown to be consistent and its objective function to be uniformly convergent. CVE outperforms the mean average variance estimation, (MAVE), its main competitor, in several simulation settings, remains on par under others, while it always outperforms the usual inverse regression based linear SDR methods, such as Sliced Inverse Regression.
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充分降维的条件方差估计
条件方差估计(CVE)是一种新颖的充分降维方法,用于具有连续预测量和链接函数的加性误差回归。它是在假设预测器可以被低维投影代替而不丢失信息的情况下运行的。与大多数基于矩的充分降维方法相比,条件方差估计完全是数据驱动的,不需要限制性线性和常方差条件,也不基于逆回归。证明了CVE是一致的,其目标函数是一致收敛的。CVE在一些模拟设置中优于其主要竞争对手均值方差估计(MAVE),在其他模拟设置中保持同等水平,同时它总是优于通常的基于逆回归的线性SDR方法,如切片逆回归。
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