Estimation of Gaussian process regression model using probability distance measures


Autoria(s): Hong, Xia; Gao, Junbin; Jiang, Xinwei; Harris, Chris J.
Data(s)

31/10/2014

Resumo

A new class of parameter estimation algorithms is introduced for Gaussian process regression (GPR) models. It is shown that the integration of the GPR model with probability distance measures of (i) the integrated square error and (ii) Kullback–Leibler (K–L) divergence are analytically tractable. An efficient coordinate descent algorithm is proposed to iteratively estimate the kernel width using golden section search which includes a fast gradient descent algorithm as an inner loop to estimate the noise variance. Numerical examples are included to demonstrate the effectiveness of the new identification approaches.

Formato

text

Identificador

http://centaur.reading.ac.uk/39721/1/21642583.2014.970731-1.pdf

Hong, X. <http://centaur.reading.ac.uk/view/creators/90000432.html>, Gao, J., Jiang, X. and Harris, C. J. (2014) Estimation of Gaussian process regression model using probability distance measures. Systems Science & Control Engineering, 2. pp. 655-663. ISSN 2164-2583 doi: 10.1080/21642583.2014.970731 <http://dx.doi.org/10.1080/21642583.2014.970731>

Idioma(s)

en

Publicador

Taylor & Francis.

Relação

http://centaur.reading.ac.uk/39721/

creatorInternal Hong, Xia

http://dx.doi.org/10.1080/21642583.2014.970731

10.1080/21642583.2014.970731

Direitos

cc_by

Tipo

Article

PeerReviewed