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Is there an easy way to divide each matrix element by the column sum? For example:

input:

1  4

4  10

output:

1/5  4/14

4/5  10/14
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3 Answers 3

up vote 29 down vote accepted

Here's a list of the different ways to do this ...

  • ... using BSXFUN:

    B = bsxfun(@rdivide,A,sum(A));
    
  • ... using REPMAT:

    B = A./repmat(sum(A),size(A,1),1);
    
  • ... using an outer product (as suggested by Amro):

    B = A./(ones(size(A,1),1)*sum(A));
    
  • ... and using a for loop (as suggested by mtrw):

    B = A;
    columnSums = sum(B);
    for i = 1:numel(columnSums)
      B(:,i) = B(:,i)./columnSums(i);
    end
    
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2  
Can't you throw the loop in just for completeness? :) –  mtrw Nov 20 '09 at 20:52
    
@mtrw: Yes, yes I can. ;) –  gnovice Nov 20 '09 at 21:11
2  
you can add this to the list: B = A ./ (ones(size(A,1),1)*sum(A,1)). I think its faster than repmat but slower than bsxfun –  Amro Nov 20 '09 at 23:45
    
@Amro - nice, I hadn't thought of that one. –  mtrw Nov 21 '09 at 0:41
2  
Thank you all very much for your help. I was curious which method is the fastest. Relative execution times are (applied to random matrix 3000x3000; experiment repeated 20 times; duration summed) fastest bsxfun (1.00), loop (1.09), ones (1.99), repmat (2.06). I am going to use the loop method :-). –  danatel Nov 21 '09 at 12:45

Couldn't resist trying a list comprehension. If this matrix was represented in a row-major list of lists, try this:

>>> A = [[1,4],[4,10]]
>>> [[float(i)/j for i,j in zip(a,map(sum,zip(*A)))] for a in A]
[[0.20000000000000001, 0.2857142857142857], [0.80000000000000004, 0.7142857142857143]]

Yes, I know that this is not super-efficient, as we compute the column sums once per row. Saving this in a variable named colsums looks like:

>>> colsums = map(sum,zip(*A))
>>> [[float(i)/j for i,j in zip(a,colsums)] for a in A]
[[0.20000000000000001, 0.2857142857142857], [0.80000000000000004, 0.7142857142857143]]

Note that zip(*A) gives transpose(A).

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1  
Is that Python? –  gnovice Nov 21 '09 at 1:18
    
Oh, sorry, yes it is. I didn't notice the Matlab tag. –  Paul McGuire Nov 21 '09 at 4:10
a=[1 4;4 10]
a =
     1     4
     4    10

a*diag(1./sum(a,1))
ans =
    0.2000    0.2857
    0.8000    0.7143
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+1, I like this one. Too bad it's 20 times slower than bsxfun. –  Robert P. Jan 28 at 22:01

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