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Statistica Sinica 31 (2021), 53-78

NONPARAMETRIC RANDOM EFFECTS FUNCTIONAL REGRESSION MODEL
USING GAUSSIAN PROCESS PRIORS

Zhanfeng Wang1, Hao Ding1, Zimu Chen1 and Jian Qing Shi2

1University of Science and Technology of China and 2Newcastle University

Abstract: For functional regression models with functional responses, we propose a nonparametric random-effects model using Gaussian process priors. The proposed model captures the heterogeneity nonlinearly and the covariance structure nonparametrically, enabling longitudinal studies of functional data. The model also has a flexible form of mean structure. We develop a procedure to estimate the unknown parameters and calculate the random effects nonparametrically. The procedure uses a penalized least squares regression and a maximum a posterior estimate, yielding a more accurate prediction. The statistical theory is discussed, including information consistency. Simulation studies and two real-data examples show that the proposed method performs well.

Key words and phrases: Functional linear model, function-on-function regression model, Gaussian process priors, nonlinear random effects.

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