Sparse functional partial least squares regression with a locally sparse slope function

被引:0
作者
Tianyu Guan
Zhenhua Lin
Kevin Groves
Jiguo Cao
机构
[1] Brock University,Department of Mathematics and Statistics
[2] National University of Singapore,Department of Statistics and Data Science
[3] Engineered Wood Products Manufacturing,Department of Statistics and Actuarial Science
[4] FPInnovations,undefined
[5] Simon Fraser University,undefined
来源
Statistics and Computing | 2022年 / 32卷
关键词
Partial least squares; B-spline basis functions; Functional data analysis; Functional linear regression; Locally sparse; Principal components;
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摘要
The partial least squares approach has been particularly successful in spectrometric prediction in chemometrics. By treating the spectral data as realizations of a stochastic process, the functional partial least squares can be applied. Motivated by the spectral data collected from oriented strand board furnish, we propose a sparse version of the functional partial least squares regression. The proposed method aims at achieving locally sparse (i.e., zero on certain sub-regions) estimates for the functional partial least squares bases, and more importantly, the locally sparse estimate for the slope function. The new approach applies a functional regularization technique to each iteration step of the functional partial least squares and implements a computational method that identifies nonzero sub-regions on which the slope function is estimated. We illustrate the proposed method with simulation studies and two applications on the oriented strand board furnish data and the particulate matter emissions data.
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