A Comparison Between Estimating The Parameters of The Gaussian Process Regression Model Using The Maximum Likelihood and The Restricted Maximum Likelihood Methods
Gaussian process regression models are used as statistical representations of computational models, due to their flexibility in capturing the shape of smooth functions. The Gaussian process regression model has a number of parameters, the estimation of which is an essential step towards building the...
Saved in:
Main Authors: | , |
---|---|
Format: | Article |
Language: | Arabic |
Published: |
College of Education for Pure Sciences
2024-12-01
|
Series: | مجلة التربية والعلم |
Subjects: | |
Online Access: | https://edusj.uomosul.edu.iq/article_184630_f6c72933f08d19b02a03f6b5ca0248f1.pdf |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
_version_ | 1846147171623108608 |
---|---|
author | Amena ilyas Younus Al-Taweel |
author_facet | Amena ilyas Younus Al-Taweel |
author_sort | Amena ilyas |
collection | DOAJ |
description | Gaussian process regression models are used as statistical representations of computational models, due to their flexibility in capturing the shape of smooth functions. The Gaussian process regression model has a number of parameters, the estimation of which is an essential step towards building the model. The parameters considered are the regression coefficients , the scaling parameter and the correlation lengths . Estimating these parameters is the problem we address in this paper. The main contribution of this work is a comparison between estimating the parameters of the Gauss process regression model using the maximum likelihood method and the restricted maximum likelihood method. This comparison was made based on some validation measures. The Gauss process regression model, whose parameters were estimated using the two methods above, was applied to a real eight-dimensional example represented by the borehole function model, and all mathematical and graphical operations were carried out using the R program. |
format | Article |
id | doaj-art-29c7ed7f36d44f6e8f9f03946230484e |
institution | Kabale University |
issn | 1812-125X 2664-2530 |
language | Arabic |
publishDate | 2024-12-01 |
publisher | College of Education for Pure Sciences |
record_format | Article |
series | مجلة التربية والعلم |
spelling | doaj-art-29c7ed7f36d44f6e8f9f03946230484e2024-12-01T17:27:50ZaraCollege of Education for Pure Sciencesمجلة التربية والعلم1812-125X2664-25302024-12-01334515910.33899/edusj.2024.151002.1472184630A Comparison Between Estimating The Parameters of The Gaussian Process Regression Model Using The Maximum Likelihood and The Restricted Maximum Likelihood MethodsAmena ilyas0Younus Al-Taweel1Department of Mathematics, College of Education of Pure Science, University of Mosul, Mosul, IraqDepartment of Mathematics, College of Education for Pure Science, University of Mosul, Iraq.Gaussian process regression models are used as statistical representations of computational models, due to their flexibility in capturing the shape of smooth functions. The Gaussian process regression model has a number of parameters, the estimation of which is an essential step towards building the model. The parameters considered are the regression coefficients , the scaling parameter and the correlation lengths . Estimating these parameters is the problem we address in this paper. The main contribution of this work is a comparison between estimating the parameters of the Gauss process regression model using the maximum likelihood method and the restricted maximum likelihood method. This comparison was made based on some validation measures. The Gauss process regression model, whose parameters were estimated using the two methods above, was applied to a real eight-dimensional example represented by the borehole function model, and all mathematical and graphical operations were carried out using the R program.https://edusj.uomosul.edu.iq/article_184630_f6c72933f08d19b02a03f6b5ca0248f1.pdfcomputer modelgaussian processmaximum likelihood estimation (mle)restricted maximum likelihood estimation (rmle)borehole function |
spellingShingle | Amena ilyas Younus Al-Taweel A Comparison Between Estimating The Parameters of The Gaussian Process Regression Model Using The Maximum Likelihood and The Restricted Maximum Likelihood Methods مجلة التربية والعلم computer model gaussian process maximum likelihood estimation (mle) restricted maximum likelihood estimation (rmle) borehole function |
title | A Comparison Between Estimating The Parameters of The Gaussian Process Regression Model Using The Maximum Likelihood and The Restricted Maximum Likelihood Methods |
title_full | A Comparison Between Estimating The Parameters of The Gaussian Process Regression Model Using The Maximum Likelihood and The Restricted Maximum Likelihood Methods |
title_fullStr | A Comparison Between Estimating The Parameters of The Gaussian Process Regression Model Using The Maximum Likelihood and The Restricted Maximum Likelihood Methods |
title_full_unstemmed | A Comparison Between Estimating The Parameters of The Gaussian Process Regression Model Using The Maximum Likelihood and The Restricted Maximum Likelihood Methods |
title_short | A Comparison Between Estimating The Parameters of The Gaussian Process Regression Model Using The Maximum Likelihood and The Restricted Maximum Likelihood Methods |
title_sort | comparison between estimating the parameters of the gaussian process regression model using the maximum likelihood and the restricted maximum likelihood methods |
topic | computer model gaussian process maximum likelihood estimation (mle) restricted maximum likelihood estimation (rmle) borehole function |
url | https://edusj.uomosul.edu.iq/article_184630_f6c72933f08d19b02a03f6b5ca0248f1.pdf |
work_keys_str_mv | AT amenailyas acomparisonbetweenestimatingtheparametersofthegaussianprocessregressionmodelusingthemaximumlikelihoodandtherestrictedmaximumlikelihoodmethods AT younusaltaweel acomparisonbetweenestimatingtheparametersofthegaussianprocessregressionmodelusingthemaximumlikelihoodandtherestrictedmaximumlikelihoodmethods AT amenailyas comparisonbetweenestimatingtheparametersofthegaussianprocessregressionmodelusingthemaximumlikelihoodandtherestrictedmaximumlikelihoodmethods AT younusaltaweel comparisonbetweenestimatingtheparametersofthegaussianprocessregressionmodelusingthemaximumlikelihoodandtherestrictedmaximumlikelihoodmethods |