Combining kernels for Gaussian Process Regression
19 views (last 30 days)
Show older comments
How can I combine (add or multiply) kernels for GPR using fitgpr function?
0 Comments
Answers (1)
Ayush Anand
on 11 Jan 2024
Hi,
You can combine multiple predefined kernels for GPR using simple addition or multiplication. Gaussian kernels are inherently defined in a way such that when they are combined through addition or multiplication, the resulting kernel retains the characteristics of a valid Gaussian kernel.
Here's an example of how to combine kernels for GPR using the "fitrgp" function:
% Define XTrain, YTrain
% ...
% Define individual kernel functions
kernel1 = @(x1,x2,theta) exp(-theta(1)*(pdist2(x1,x2).^2)); %Squared Exponential Kernel
kernel2 = @(x1,x2,theta) (1 + pdist2(x1,x2).^2/(2*theta(1)*theta(2))).^(-theta(2)); %Rational Quadratic Kernel
% Combine kernels by addition or multiplication. theta is a vector of hyperparameters for the combined kernel
combinedKernel = @(x1,x2,theta) ...
(kernel1(x1,x2,theta(1:1)) + kernel2(x1,x2,theta(2:3)));
% Define initial values for the kernel parameters of combinedKernelAddition
initialTheta = [1, 1, 1]; % Set this as per initial conditions
% Train the GPR model using the combined kernel
gprMdlAddition = fitrgp(XTrain, YTrain, 'KernelFunction', combinedKernel, ...
'KernelParameters', initialTheta);
% Now you can use gprMdlAddition to make predictions
% ...
You can refer to the following link for reading more on the available kernels in MATLAB and how to use a custom kernel with "fitrgp" function:
Hope this helps!
0 Comments
See Also
Categories
Find more on Gaussian Process Regression in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!