Sparse minimum average variance estimation through signal extraction approach to multivariate regression

Q4 Mathematics
Saja Mohammad, Z. Alabacy
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Abstract

In this paper, a new sparse method called (MAVE-SiER) is proposed, to introduce MAVE-SiER, we combined the effective sufficient dimension reduction method MAVE with the sparse method Signal extraction approach to multivariate regression (SiER). MAVE-SiER has the benefit of expanding the Signal extraction method to multivariate regression (SiER) to nonlinear and multi-dimensional regression. MAVE-SiER also allows MAVE to deal with problems which the predictors are highly correlated. MAVE-SiER may estimate dimensions exhaustively while concurrently choosing useful variables. Simulation studies confirmed MAVE-SiER performance.
稀疏最小平均方差估计通过信号提取方法进行多元回归
本文提出了一种新的稀疏方法(MAVE-SiER),为了引入MAVE-SiER,我们将有效的充分降维方法MAVE与稀疏方法信号提取方法多变量回归(SiER)相结合。MAVE-SiER的优点是将信号提取方法从多元回归(SiER)扩展到非线性和多维回归。MAVE- sier还允许MAVE处理预测因子高度相关的问题。MAVE-SiER可以在同时选择有用变量的同时详尽地估计维度。仿真研究证实了MAVE-SiER的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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