Compare probability density functions of 2 vectors

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T.C.
T.C. am 8 Nov. 2024 um 13:57
Bearbeitet: Bruno Luong am 10 Nov. 2024 um 13:20
I have two vectors v and w of different legths and with positive elements. Each element of both vectors can be considered to be drawn according to some probability density function. I would need to check that the pdf of both is (more or less) the same, how could I do this in Matlab? I was thinking to plot the cdf of both vectors and see how much they differed, but maybe there's a better way to do that.
  2 Kommentare
Jeff Miller
Jeff Miller am 9 Nov. 2024 um 18:06
Did you already check whether the means/medians are the same (e.g., ttest2 or ranksum) and also check the variances (e.g., vartest2, ansaribradley)? If you can reject equality of either of those then of course you can conclude the vectors come from populations with different pdfs.
You can also use kstest2 to check the full pdfs, but keep in mind that this test has very low power unless the pdfs are very different or the vectors are very long. (That means the data will rarely allow you to conclude the pdf's are different even when they are. Power would be much higher for the tests of means and variances.)
William Rose
William Rose am 10 Nov. 2024 um 0:31
Jeff Miller, good idea.

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Bruno Luong
Bruno Luong am 8 Nov. 2024 um 14:14
Use histcounts to compute pdfs then compare them
  2 Kommentare
Bruno Luong
Bruno Luong am 9 Nov. 2024 um 19:42
Bearbeitet: Bruno Luong am 10 Nov. 2024 um 13:20
If seems cdf comparison is better than pdf. There os a better separation. Both are normalized to 1 (maximum difference).
As Jeff Miller has suggested you can also derive mean, median, standard deviation, high order moments, skewness, kurtosis, etc
Ntest = 100;
for i = 1:Ntest
x1=rand(1,500);
x2=rand(1,400);
x3=rand(1,600)*1.2;
[dpdf12(i),dcdf12(i)] = diffpdf(x1,x2);
[dpdf13(i),dcdf13(i)] = diffpdf(x1,x3);
end
i = 1:Ntest;
subplot(2,1,1)
plot(i, dpdf12, 'b', i, dpdf13, 'r')
ylabel('dpdf')
legend('x1-x2','x1-x3')
subplot(2,1,2)
plot(i, dcdf12, 'b', i, dcdf13, 'r')
ylabel('dcdf')
legend('x1-x2','x1-x3')
function [dpdf,dcdf] = diffpdf(x1,x2)
x = [x1,x2];
[a,b] = bounds(x);
edges = linspace(a,b,33);
pdf1 = histcounts(x1,edges,'Normalization','pdf');
pdf2 = histcounts(x2,edges,'Normalization','pdf');
dx = mean(diff(edges));
dpdf = norm(pdf1-pdf2,1)*dx/2; % divide by 2 so as max(dpdf) is 1
cdf1 = cumsum(pdf1)*dx; % histcounts(x1,edges,'Normalization','cdf');
cdf2 = cumsum(pdf2)*dx; % histcounts(x2,edges,'Normalization','cdf');
dcdf = norm(cdf1-cdf2, Inf);
end
Bruno Luong
Bruno Luong am 10 Nov. 2024 um 9:25
Another exmple to show the dindicator when comppare RAND and RANDN
Ntest = 100;
for i = 1:Ntest
x1=rand(1,500);
x2=rand(1,400);
x3=randn(1,600);
[dpdf12(i),dcdf12(i)] = diffpdf(x1,x2);
[dpdf13(i),dcdf13(i)] = diffpdf(x1,x3);
end
i = 1:Ntest;
subplot(2,1,1)
plot(i, dpdf12, 'b', i, dpdf13, 'r')
ylabel('dpdf')
legend('x1-x2','x1-x3')
subplot(2,1,2)
plot(i, dcdf12, 'b', i, dcdf13, 'r')
ylabel('dcdf')
legend('x1-x2','x1-x3')
function [dpdf,dcdf] = diffpdf(x1,x2)
x = [x1,x2];
[a,b] = bounds(x);
edges = linspace(a,b,33);
pdf1 = histcounts(x1,edges,'Normalization','pdf');
pdf2 = histcounts(x2,edges,'Normalization','pdf');
dx = mean(diff(edges));
dpdf = norm(pdf1-pdf2,1)*dx/2; % divide by 2 so as max(dpdf) is 1
cdf1 = cumsum(pdf1)*dx; % histcounts(x1,edges,'Normalization','cdf');
cdf2 = cumsum(pdf2)*dx; % histcounts(x2,edges,'Normalization','cdf');
dcdf = norm(cdf1-cdf2, Inf);
end

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William Rose
William Rose am 8 Nov. 2024 um 14:48
Bearbeitet: William Rose am 9 Nov. 2024 um 23:00
[Edit: fix error in my code below.]
x1=rand(1,50);
x2=rand(1,40);
[h,p]=kstest2(x1,x2);
if h
fprintf('prob(x1,x2) from same distribution=%.3f.',p);
fprintf('Accept the null hypothesis that they are are from same distribution.');
else
fprintf('prob(x1,x2) from same distribution=%.3f.',p);
fprintf('Reject the null hypothesis that they are are from same distribution.');
end
prob(x1,x2) from same distribution=0.503.
Accept the null hypothesis that they are are from same distribution.
OK
  10 Kommentare
Bruno Luong
Bruno Luong am 9 Nov. 2024 um 14:40
@Paul "By "p seem to vary quite a bit from run to run." do you mean the following?"
Yes your question seems arrive at the samme time than I edit my post.
Paul
Paul am 10 Nov. 2024 um 1:46
Hi William,
After the edit, I still think the logic in the code is not correct. According to kstest2, if h = 1, the null hypothesis should be rejected. Consider what happens if we change the distribution for x2
x1=rand(1,50);
%x2=rand(1,40);
x2=randn(1,40);
[h,p]=kstest2(x1,x2);
if h
fprintf('prob(x1,x2) from same distribution=%.3f.',p);
fprintf('Accept the null hypothesis that they are are from same distribution.');
else
fprintf('prob(x1,x2) from same distribution=%.3f.',p);
fprintf('Reject the null hypothesis that they are are from same distribution.');
end
prob(x1,x2) from same distribution=0.000.
Accept the null hypothesis that they are are from same distribution.

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