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Is there any efficient (speed of computation + amount of keystrokes) way to perform row-normalization in MATLAB, using the built in functions?

This is what I've came up with so far

A = rand(m, n); % m rows, n cols
v = pdist2(zeros(1, size(A, 2)), A);
normA = diag(1./v) * A;
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Normalization can mean many things. Do you want the sum of the row elements add up to one? Or do you want the maximum element in the row to be limited to +/-1? – Kavka Dec 12 '11 at 1:49

Assuming you want row sums to be 1:

bsxfun(@times, A, 1./(sum(A, 2)))


If you're looking for the l2 norm as @Oli suggests below, then

bsxfun(@times, A, 1./sqrt(sum(A.^2, 2)))

In that case, you can semi-gracefully handle zero row sums by doing

bsxfun(@times, A, 1./(max(sum(A, 2), eps)))
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안녕하새요. According to his code, I think he needs the L2-normaliztion... 1./sqrt(sum(A.^2, 2)). Because pdist2 will compute the L2 distance to a zero vector, which is the L-2 norm. – Oli Dec 12 '11 at 9:31
Thanks :) <pedantic>Technically that's the l2 (little L) norm.</pedantic> – dantswain Dec 12 '11 at 14:42

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