Interpreting xcorr results compared to corrcoef

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JM
JM le 16 Août 2019
Modifié(e) : zmkal le 14 Jan 2024
I am having trouble understanding why I am getting different outputs when using coeff and a normalized xcorr, specifically at 0 lags.
Shouldn't 0 lags produce the same r value when using an xcorr compared to coeff since the time series is matched up in both cases?
Note - I am using "coeff" because the two sets of data are equal in length, but the ampltitudes are much different.
Below illustrates the example:
I have two sets of data (A and B) that are 1000 datapoints each.
I use corrcoef(A,B) and then I use xcorr(A,B,500,'coeff").
corrcoef outputs a single value that is rather low such as r = 0.15.
xcorr outputs r values at lags -500 to 500, and they are all higher than r = 0.15.
However my question is, shouldn't r at 0 lag be = 0.15 since the data is already lined up in time?

Réponse acceptée

David Goodmanson
David Goodmanson le 17 Août 2019
Hi Jonathan,
For the input column vectors, corrcoeff subtracts the mean off of each one and normalizes each to be a unit vector. xcorr with the 'coeff' option normalizes, but doesn't subtract off the mean.
a = (1:1000)';
b = mod((a.^(4/3)),1000);
corrcoef([a b])
ans =
1.0000 0.1745
0.1745 1.0000
xcorr(a,b,0,'coeff') % zero lag only
ans =
0.7865
aa = a-mean(a);
bb = b-mean(b);
xcorr(aa,bb,0,'coeff')
ans =
0.1745 % agrees
  5 commentaires
David Goodmanson
David Goodmanson le 7 Mai 2020
Modifié(e) : David Goodmanson le 7 Mai 2020
Hello SZ, thanks for the comment. it's good to hear that a blast from the past still might be useful.
zmkal
zmkal le 12 Jan 2024
Modifié(e) : zmkal le 14 Jan 2024
Hi @David Goodmanson, still helpful but has raised a few new questions for me.
Maybe someone or you can help?
First, I calculated an autocorrelation function using xcorr:
[akf, lags] = xcorr(A-mean(A), 'coeff');
and secondly via corrcoef:
B = A;
for i = 1:length(A)-1
B = circshift(B,1);
R = corrcoef(A,B);
corr(i,1) = R(2,1);
end
Of course, the first variant also shifts the function in the negative direction and the second variant only in the positive direction in the way I implemented it. However, from what I read above, I would have expected the functions to look the same in the range of the positive shift?
But they do not ....

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