GPFDA {GPFDA}R Documentation

GPFDA: A package for Gaussian Process Regression for Functional Data Analysis

Description

Gaussian Process Regression for Functional Data Analysis

Details

The main functions of the package are:

gpr

Gaussian process regression using stationary separable covariance kernels.

nsgpr

Gaussian process regression using nonstationary and/or nonseparable covariance kernels.

mgpr

Multivariate Gaussian process – regression for multivariate outputs.

gpfr

Functional regression model given by

y_m(t)=\mu_m(t)+\tau_m(x)+\epsilon_m(t),

where m is the m-th curve or surface; \mu_m is from functional regression; and \tau_m is from Gaussian Process regression with mean 0 covariance matrix k(\bf \theta).

Author(s)

Jian Qing Shi, Yafeng Cheng, Evandro Konzen

References

Shi, J. Q., and Choi, T. (2011), “Gaussian Process Regression Analysis for Functional Data”, CRC Press.


[Package GPFDA version 3.1.3 Index]