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If I have a matrix:

data = rand(365,5);

What is the most appropriate way of calculating the correlation between each column and the mean of the remaining columns. For example, for the first column:

  R = nonzeros(tril(corrcoef(data(:,1),mean(data(:,2:end)')'),-1));

How could I repeat this procedure so that I have 5 correlation values i.e. for each series?

EDIT:

Thanks for the comments. This could also be done in one line:

R = arrayfun(@(x)nonzeros(tril(corrcoef(data(:,x),...
    mean(data(:,setdiff(1:size(data,2),x))')'),-1)),1:size(data,2));

for those who wish to avoid loops. Although in this case the methods shown below are better due to their readability.

share|improve this question
    
Does corrcoef(data) not work? It should return a 5x5 matrix containing the correlations between all possible combinations of the columns. –  slayton Jul 19 '12 at 17:21
    
It does work just not for what I need. I want to calculate the correlation between each column and the mean of the other columns not the correlation between each column –  KatyB Jul 19 '12 at 17:28

2 Answers 2

up vote 1 down vote accepted
for i=1:5
    x = data(:,i);
    y = mean(data(:,(1:5) ~= i)')';
    R(i) = nonzeros(tril(corrcoef(x,y),-1));
end
share|improve this answer

A slightly simplified version:

R = zeros(1,5);
for i=1:5
    x = data(:,i);
    y = mean(data(:,(1:5)~=i), 2);
    R(i) = corr(x,y);
end
share|improve this answer
    
many thanks. Can also avoid loops by using the method shown above (EDIT) –  KatyB Jul 21 '12 at 8:36
    
@Kate: you are not really avoiding loops, ARRAYFUN basically has a loop hidden inside it. Not to mention this is way more readable.. –  Amro Jul 21 '12 at 16:16

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