LogLikelihood for Gaussian Process regression (function: `fitgpr`) for given set of hyperparameter

3 次查看(过去 30 天)
I am interested in calculating LogLikelihood using Gaussian Process for given hyperparameters and noise parameter i.e. without optimizing for parameters.
In the following example; [3.5, 6.2, 0.2] are provided as parameters and since 'FitMethod' is 'none' fitgpr will not optimize for parameters
load(fullfile(matlabroot,'examples','stats','gprdata2.mat'))
sigma0 = 0.2;
kparams0 = [3.5, 6.2];
gprMdl2 = fitrgp(x,y,'KernelFunction','squaredexponential',...
'FitMethod','none', 'KernelParameters',kparams0,'Sigma',sigma0);
ypred2 = resubPredict(gprMdl2);
but variable gprMdl2.LofLikelihood = [ ], I am interested in LogLikelihood precisely for parameters [3.5, 6.2, 0.2] not for optimized ones.
Thanks
This question is in continuation to this post.

采纳的回答

Gautam Pendse
Gautam Pendse 2018-2-6
Hi Pankaj,
Loglikelihood is not calculated for 'FitMethod','none'. As a temporary workaround, there is an undocumented internal feature that does this calculation:
gprMdl2.Impl.computeLogLikelihoodExact()
Hope this helps,
Gautam

更多回答(0 个)

类别

Help CenterFile Exchange 中查找有关 Gaussian Process Regression 的更多信息

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by