Sign up ×
Stack Overflow is a community of 4.7 million programmers, just like you, helping each other. Join them; it only takes a minute:

I'm trying to find some way to substract a size 3 vector from each column of a 3*(a big number) matrix in Matlab. Of course I could use a loop, but I'm trying to find some more efficient solution, a bit like numpy broadcasting. Oh, and I can't use repmat because I just don't have enough memory to use it (as it creates yet another 3*(a big number) matrix)...

Is this possible?

share|improve this question

3 Answers 3

up vote 16 down vote accepted

Loops aren't bad in MATLAB anymore thanks to compiler optimizations like just-in-time acceleration (JITA). etc. Most of the time, I've noticed that a solution with loops in current MATLAB versions is much faster than complicated (albeit, cool :D) one-liners.

bsxfun might do the trick but in my experience, it tends to have memory issues as well but less so than repmat.

So the syntax would be:

AA = bsxfun(@minus,A,b) where b is the vector and A is your big matrix

But I urge you to profile the loopy version and then decide! Most probably, due to memory constraints, you might not have a choice :)

share|improve this answer
You may be right about BSXFUN. It will still have memory issues, but I believe it usually does slightly better than using REPMAT. – gnovice Jul 9 '10 at 14:13
The thing I like about bsxfun is that in the 2010a and 2010b versions it will natively multithread your code for improved performance without too much intervention on your part. – JudoWill Jul 9 '10 at 16:44
@JudoWill: That's great! I've been looking for a clear case against repmat --- do you have any documentation regarding it? – Jacob Jul 9 '10 at 18:20
Perhaps this link:… , as you can see, multithreading only kicks in for large enough matrices. – Amro Jul 9 '10 at 19:30

I don't know if this will speed up the code, but subtraction of a scalar from a vector doesn't have memory issues. Since your matrix size is so asymmetrical, the overhead from a for-loop on the short dimension is negligible.

So maybe

matout = matin;
for j = 1:size(matin, 1) %3 in this case
     matout(j,:) = matin(j,:) - vec_to_subtract(j);

of course, you could do this in place, but I didn't know if you wanted to preserve the original matrix.

share|improve this answer
Actually, the for loop is on the large dimension (as I'm substracting a size-3 vector from each column of a size-3*(a lot) array), so that was why I was afraid of the for loop. – antony Jul 13 '10 at 13:50
Think about it this way -- divide your array into 3 vectors of size 1xN. then subtract the corresponding scalar from each vector. So the for loop is along the short dimension. – Marc Jul 13 '10 at 17:54
OK, I see it now. Thanks. – antony Jul 19 '10 at 13:23

Actually, it seems that (operator overloading with mex files) does the trick too, even though I haven't tested it yet.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.