How to use the gaussian process regression function in matlab 2015b ?
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Regis
am 15 Nov. 2015
Beantwortet: Gautam Pendse
am 19 Nov. 2015
I'm trying to reproduce the picture at the end of the documentation: http://www.mathworks.com/help/stats/gaussian-process-regression-models.html the one on the left.
However, I cant quite do it.
This is what I have so far:
fun = @(x) x.*sin(x);
xx = linspace(0,10,100)';
yy = fun(xx);
nd = 5;
xd = linspace(1,9,nd)';
yd = fun(xd);
gp = fitrgp(xd,yd,'KernelFunction','squaredexponential');
figure(1); clf
plot(xx,yy, 'g-')
hold on
plot(xx,predict(gp,xx), 'r-')
However this doesn't work. It looks like the beta parameter is set at a constant and you can change the basis function used. But, why use Gaussian Processes if you have to provide it with the function you're trying to emulate? I'm trying to use GPs to model simulation data and the process that generate them can't be written as a nice function (basis function).
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Gautam Pendse
am 18 Nov. 2015
Hi Regis,
Here's how you can reproduce the doc example:
% True curve.
fun = @(x) x.*sin(x);
xx = linspace(0,10,100)';
yy = fun(xx);
% Example points (from doc). You can do xd = linspace(1,9,nd)' as well
% but you will get a different fit.
xd = [1,3,5,6,7,8]';
yd = fun(xd);
% Fit a GP model. Initialize 'Sigma' to a small value. A GP estimates
% its parameters by maximizing the marginal log likelihood. Depending
% on the data, the marginal log likelihood can have multiple local
% optima corresponding to different interpretations of the data.
% Initializing 'Sigma' to a small value discourages the high noise
% variance interpretation of the data.
gp = fitrgp(xd,yd,'KernelFunction','squaredexponential','sigma',0.1,'verbose',1);
% Plot.
figure(1); clf
plot(xx,yy, 'r-.')
hold on;
[ypred,~,yint] = predict(gp,xx);
plot(xx,ypred, 'g-');
plot(xx,yint(:,1),'k-');
plot(xx,yint(:,2),'m-');
plot(xd,yd,'ro');
legend('f(x) = x.*sin(x)','GPR predictions','Lower 95% interval','Upper 95% interval','Observations','Location','Best');
Hope this helps,
Gautam
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Gautam Pendse
am 19 Nov. 2015
Replace xd and yd by something like this:
xd = linspace(0,10,20)';
yd = fun(xd) + 1*randn(20,1);
Rest of the code remains the same.
Gautam
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