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I have this hundreds of thousands of rows. What I want is for every 10 rows, I want to take its average or bin it. I can implement this running a for loop, but this will take a very long time. Is there a more direct way?

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So if you have a 1000 row vector data, you want a 100 row vector result where result(k) == mean(data((10*(k-1)+1):10*k)? Makes sense, but it isn't what I normally think of as "binning" –  Dan Becker Nov 16 '12 at 17:06
    
What @DanBecker said, or do you want a 1000-element output that has applied the average on each successive 10-element subvector (i.e., an overlapping sliding window)? –  Ahmed Fasih Nov 16 '12 at 17:50
    
Yes, "binning" means the following: [1 1 2 3 5 10]-> bin [0 4] with count 4 and bin [5 10] with count of 2. Can you please correct, Rajan? –  Barnabas Szabolcs Nov 17 '12 at 16:07
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3 Answers

This should work, as long as the length of your vector is a multiple of 10:

data = rand(100,1);
result = mean(reshape(data, 10, length(data)/10),1)

If the length is not a multiple of 10, you'll need to decide what to do with the extra elements, and add some special case for that.

Update

Inspired by Rody's solution, the following will work on matrices of arbitrary dimension, as long as the first dimension is a multiple of 10:

data = rand(100,3,2);
sz = size(data);
result = squeeze(mean(reshape(data, [10 sz(1)/10 sz(2:end)]),1))
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Alternatively:

result = arrayfun(...
    @(x) mean(data(x:min(x+9,end),:),1), ...
    1:10:size(data,1), 'UniformOutput', false);
result = cat(1, result{:});

This one's a bit less sensitive to the exact number of rows in data. If there are only 6 rows left at the end, it will average those 6.

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Why did you add the ,: in data(x:min(x+9,end),:)? It doesn't seem to make any difference in the results. –  Dan Becker Nov 16 '12 at 18:41
    
I think you can simplify this down to arrayfun(@(x) mean(data(x:min(x+9,end))),1:10:length(data)), which will work for both column and row vectors. –  Dan Becker Nov 16 '12 at 18:51
    
@DanBecker try data = rand(101,3); and my answer will make more sense. The OP didn't mention his data was a vector, so I made my answer to work for the more general case; with matrices. –  Rody Oldenhuis Nov 16 '12 at 20:17
    
Ah, nice! I'll try get my reshape approach to support this too. –  Dan Becker Nov 16 '12 at 22:36
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Use y=smooth(x,10) or y=filter(ones(1,10), 1, x) and then use y(1:10:end) to select every 10th element.

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smooth(x,10) is equivalent to smooth(x,9), so that doesn't work. For your filter idea to work you need to use y=filter(ones(1,10), 10, data) and y(10:10:end) –  Dan Becker Nov 16 '12 at 18:29
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