# NAN for correlation of random series in Matlab

I wanted to generate 2 uncorrelated signals by using Matlab but I am having strange results, probably due to my limited experience.

I know that there are functions `rand` and `randn`. If I generate these 2 by using `randn` the correlation of the 2 is always calculated and it is very low (as I was expecting).

``````z1 = randn(1,1000);
z2 = randn(1,1000);
corr(z1,z2) % it returns a very low number as expected
``````

If I generate the 2 (or both) by using `rand` like below the correlation is `NAN`.

``````z1 = rand(1,1000);
z2 = rand(1,1000);
corr(z1,z2) % it returns a matrix (instead of vector?!) of NAN
``````

If I use again the 2 (or both) using `rand` but this time generating a matrix instead of a vector it works and the correlation matrix is fine.

``````z1 = rand(1000);
z2 = rand(1000);
corr(z1,z2) % it returns a matrix of finite values
``````

Do you know why in the second case (the one with NAN) I am returned

1. a matrix instead of a vector
2. why these are all NAN instead of a single finite value?
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## migrated from stats.stackexchange.comDec 16 '13 at 11:10

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Minor suggestion: If you use `%` for comments people can more easily copy the code fragments. –  Dennis Jaheruddin Dec 16 '13 at 11:16
Hi Dennis. You are right. I am using the wrong comment..instead the one for Matlab I am using the one for Visual Basic. Sorry about that. Fixed now. –  Abruzzo Forte e Gentile Dec 16 '13 at 11:37

Essentially, `corr` is expecting column vectors as inputs, corr(X,Y) returns a p1-by-p2 matrix containing the pairwise correlation coefficient between each pair of columns in the n-by-p1 and n-by-p2 matrices X and Y. So, you were asking it to calculate the correlation on 1000 columns with only 1 observation per column! This is why you received a `NaN`.
This explains why a `NaN` appears in the second case, and makes sense for that --- but then wouldn't we also expect `NaN` to appear in the first case? Explaining why they're different in the two cases is kind of the issue here. –  Glen_b Dec 16 '13 at 11:04