I have a large m *n sparse matrix Y. I would like to normalize each row of Y, so that each row has zero mean.
I first tried this. But the mean of each row is also subtracted from the zero entries, which is not what I want.
Ynorm = bsxfun(@minus, Y, Ymean);
Then I tried this.
[m, n] = size(Y); nonZeroNum = nnz(Y); Ynorm = spalloc(m,n,nonZeroNum); for i = 1:m Ynorm(i, :) = spfun(@(x)(x - Ymean(i)), Y(i, :)); end
However, this non-vectorized solution is too slow.
I've also thought of combining bsxfun and spfun, but didn't make it.
Does anyone have a vectorized solution?