Subspace Gaussian process regression model for ensemble nonlinear multivariate spectroscopic calibration

Junhua Zheng, Yingkai Gong, Wei Liu,Le Zhou

Chemometrics and Intelligent Laboratory Systems(2022)

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摘要
In this paper, we have proposed a set of ensemble Gaussian process regression (GPR) models for nonlinear spectroscopic calibration. Based upon the random subspace modeling method, the new subspace GPR model constructs several subspaces along those directions determined by principal component analysis of the spectral data. Unlike the random subspace method in which the subspaces are constructed through a random manner, the new method determines the subspaces through uncorrelated directions, which could improve both robustness and diversity for the ensemble model. Several comparative studies are carried out among the basic GPR model, the random subspace GPR and the new developed subspace GPR model. It is demonstrated that both of the prediction accuracy and robustness have been improved by the new subspace GPR model.
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关键词
Multivariate calibration,Gaussian process regression,Random subspace,Ensemble model
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