smoothing with Gaussian Kernel for loop problem

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im having a probelm with smoothing the data "ys" using gaussian kernel function everytime i run the for loop i recieve uhat = ys and kerf = 0 0 0 0 0 ... anyone can help me?
ns =length(ys);
nv =length(tv);
lambda = 0.05;
tv = (1:1:1000)';
for i = 1 : ns
k=(tv-tv(i));
kerf=exp(-k.*k/2*(lambda^2))/(sqrt(2*pi)*lambda);
uhat(i)=sum(kerf.*ys(i))/sum(kerf);
end

Accepted Answer

Mathieu NOE
Mathieu NOE on 18 Nov 2022
hello
try this
lambda = 0.05;
tv = (1:1:1000)';
nv =length(tv);
ys = sin(4*pi*tv./max(tv))+0.25*rand(nv,1);% dummy data
for i = 1 : nv
k=(tv-tv(i));
kerf=exp(-k.*k/2*(lambda^2))/(sqrt(2*pi)*lambda);
uhat(i)=sum(kerf(:).*ys(:))/sum(kerf);
end
plot(tv,ys,tv,uhat);
  8 Comments
KHOULOUD DABOUSSI
KHOULOUD DABOUSSI on 21 Nov 2022
by chance,do you have any idea how to select the optimal bandwidth (lambda)? not using ksdensity?
Mathieu NOE
Mathieu NOE on 22 Nov 2022
hello again
well, statistics are not my field of expertise
there are some publications that describe some methods for optimal tuning of lambda
but then i's up to you to code that as a matlab function (would basically be your own version of ksdensity)

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