Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Consider 2 Vectors A = [20000000 x 1] and B = [20000000 x 1 ]

I would need to find the sum of all A corresponding to every unique element of B.

Although this looks really easy, this is taking forever in MATLAB.

Currently, I am using

u = unique(B);
length_u = length(u);
C = zeros(length_u,1);

for i = 1:length_u
   C(i,1) = sum(A(B==u(i)));
end

Is there anyway to make it run faster? I tried splitting the loop and running 2 parfor loops using the parallel computing toolbox(because I have only 2 cores). Still takes hours.

P.S: Yes, I should get a better computer.

share|improve this question
1  
what is the bottleneck? the unique or the loop? –  Shai Jun 26 at 7:40
    
could you post your A and B matrices? For example, A=randi(100,[20000000,1]); etc. –  Parag S. Chandakkar Jun 26 at 7:40
    
@Shai Its the loop. Running over so many iterations. Matlab gets confused, I think. –  Nishanth Jun 26 at 8:02
    
If I do a profile of your code it's the unique for me. –  bdecaf Jun 26 at 8:40
    
@bdecaf what did you use for A and B? if A has relatively small number of unique elements the loop is no longer the bottleneck, but if A is large with many unique elements than the unique becomes negligble –  Shai Jun 26 at 8:46

4 Answers 4

up vote 6 down vote accepted

You must see this answer first.
If you must, you can use a combination of histc and accumarray

A = randi( 500, 1, 100000 );
B = randi( 500, 1, 100000 );

ub = unique( B );

[ignore idx] = histc( B, [ub-.5 ub(end)+.5] );
C = accumarray( idx', A' )';

see a toy comparison to the naive for-loop implementation on ideone.

How does it work?

We use the second outout of histc to map elements of B (and later A) to the bins defined by the elements of ub (the unique elements of B).
accumarray is then used to sum all entries of A accorind to the mapping defined by idx.
Note: I assume the unique elements of B are at least 0.5 apart.

share|improve this answer
    
What is ub here? –  Nishanth Jun 26 at 8:03
    
@Nishanth uc was a typo. please see my edit. –  Shai Jun 26 at 8:06
    
@Shai The only thing which is not quite nice in your solution is the fact which you have written in your "Note". But really well done. I didn't think about histc. +1 –  The Minion Jun 26 at 8:33
    
@TheMinion the +.5 can be averted by looking at the smallest abs diff in ub - but I wanted to keep the code simple. –  Shai Jun 26 at 8:35
1  
@AnderBiguri you are right. However, I am used to an old version of Matlab that does not support ~ :(... old habits die hard. –  Shai Jun 26 at 10:29

If B contains only integers, you can do it easily in one line, using the fact that sparse adds elements with the same index:

C = nonzeros(sparse(B,1,A));
share|improve this answer
    
Nice solution for integers. I didn't know sparse did this. –  The Minion Jun 26 at 9:09
    
@TheMinion Thanks! Yes, it's not a very well known feature of Matlab. It more or less turns sparse into an accumarray with the issparse option –  Luis Mendo Jun 26 at 9:16
    
@LuisMendo in that respect accumarray is an extension of sparse. Using accumarray with histc generalize to non-integers as well. –  Shai Jun 26 at 9:21

Further simplification of code suggested by Shai:

A = randi( 500, 1, 100000 );
B = randi( 500, 1, 100000 );

[~,~,idb] = unique( B );

C = accumarray( idb', A' )';

The "idb" here gives a vector same as that of "idx" in code suggested by Shai.

share|improve this answer
    
+1 superb! I completely forgot the extra outputs of unique... –  Shai Jun 26 at 11:26

I modified the sum. Instead of having to check each element rather it fits the case (B==u(i)) or not, I sorted the array and stopped the moment the element changed. While starting the next sum from that element. That way I only had to loop over each element in A ones, instead of length_u times. Here is the code I used:

A= rand(100000,1);
B= round(rand(100000,1)*25000);
u = unique(B);
length_u = length(u);
C = zeros(length_u,1);
E = zeros(length_u,1);
tic;
for k = 1:length_u
   C(k,1) = sum(A(B==u(k)));
end
t_OP=toc;

tic
D= sortrows([A,B],2);
n=1;
for l=1:numel(u)
    m=n;
    while m<numel(B) && D(m+1,2)==u(l) 
        m=m+1;
    end
    E(l,1) = sum(D(n:m,1));
    n=m+1;
end
t_trial=toc;
display(t_OP)
display(t_trial)

I used your code as well. The elapsed time for your code was: t_OP=10.9398 and for my modification: t_trial=0.0962. Hopefully this helps. I made sure the code worked by building sum(E-C) which was 0.
EDIT: Speedtest
I compared it to @Shai's solution as well. THis resulted in

t_OP =

   10.8147
t_trial =

    0.0984
t_Shai =

    0.0154


EDIT: Comment by @moarningsun
Instead of using the while-loop. You can use the second output of unique if you sort your array before building the sum.

tic
A = randi( 25000, 1, 100000 );
B = randi( 25000, 1, 100000 );
D= sortrows([A',B'],2);
[u, idx] = unique(D(:,2));
idx = [idx; numel(D(:,2))+1];
for l=1:numel(u)
    E(l,1) = sum(D(idx(l):idx(l+1)-1,1));
end
t_trial=toc;
share|improve this answer
    
how does your method compares to histc and accumarray? –  Shai Jun 26 at 8:23
    
@Shai I edited my post. My modification resulted in a factor 100 compared to OP yours resulted in an aditional factor 10. So about 1000 times faster than OP. –  The Minion Jun 26 at 8:28
    
You could also sort B first and then get the "boundary" indices from [i, idx] = unique(B_sorted). It saves you the while loop. –  moarningsun Jun 26 at 8:50
    
@moarningsun You are right. I tried it but it didn't really change anything regarding run time. I will post it as a second Edit for future reference. –  The Minion Jun 26 at 9:03

Your Answer

 
discard

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.