Open Access
March 2011 Estimation on inverse regression using principal components of covariance matrix of sliced data
Tomoyuki Akita
Hiroshima Math. J. 41(1): 41-53 (March 2011). DOI: 10.32917/hmj/1301586289

Abstract

Li (1991) introduced the so called sliced inverse regression (SIR) which reduces the dimension of the input variable in regression analysis, without any modelfitting process. Akita et al. (2009) proposed an improvement of SIR, called SIR, which uses conditional covariate matrices. In this paper, developing the approach of PCASIR, we propose yet another improvement of SIR, which we call PCA-SIR2. Simulation results produced by SIR, PCA-SIR and PCA-SIR2 are compared.

Citation

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Tomoyuki Akita. "Estimation on inverse regression using principal components of covariance matrix of sliced data." Hiroshima Math. J. 41 (1) 41 - 53, March 2011. https://doi.org/10.32917/hmj/1301586289

Information

Published: March 2011
First available in Project Euclid: 31 March 2011

zbMATH: 1284.62401
MathSciNet: MR2809047
Digital Object Identifier: 10.32917/hmj/1301586289

Subjects:
Primary: 62J02
Secondary: 62H10

Keywords: Dimension reduction , Non-linear model , sliced inverse regression

Rights: Copyright © 2011 Hiroshima University, Mathematics Program

Vol.41 • No. 1 • March 2011
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