# MATLAB find mean of column in matrix using two different indices

I have a `22007x3` matrix with data in column 3 and two separate indices in columns 1 and 2.

eg.

``````x =

1   3   4
1   3   5
1   3   5
1   16  4
1   16  3
1   16  4
2   4   1
2   4   3
2   11  2
2   11  3
2   11  2
``````

I need to find the mean of the values in column 3 when the values in column 1 are the same AND the values in column 2 are the same, to end up with something like:

``````ans =

1   3   4.6667
1   16  3.6667
2   4   2
2   11  2.3333
``````

Please bear in mind that in my data, the number of times the values in column 1 and 2 occur can be different.

Two options I've tried already are the `meshgrid`/`accumarray` option, using two distinct `unique` functions and a 3D array:

``````[U, ix, iu] = unique(x(:, 1));
[U2,ix2,iu2] = unique(x(:,2));
[c, r, j] = meshgrid((1:size(x(:, 1), 2)), iu, iu2);
totals = accumarray([r(:), c(:), j(:)], x(:), [], @nanmean);
``````

which gives me this:

``````??? Maximum variable size allowed by the program is exceeded.

Error in ==> meshgrid at 60
xx = xx(ones(ny,1),:,ones(nz,1));
``````

and the loop option,

``````for i=1:size(x,1)
if x(i,2)== x(i+1,2);
totals(i,:)=accumarray(x(:,1),x(:,3),[],@nanmean);
end
end
``````

which is obviously so very, very wrong, not least because of the `x(i+1,2)` bit.

I'm also considering creating separate matrices depending on how many times a value in column 1 occurs, but that would be long and inefficient, so I'm loathe to go down that road.

-

Group on the first two columns with a `unique(...,'rows')`, then accumulate only the third column (always the best approach to accumulate only where accumulation really happens, thus avoiding indices, i.e. the first two columns, which you can reattach with `unX`):

``````[unX,~,subs] = unique(x(:,1:2),'rows');
out          = [unX accumarray(subs,x(:,3),[],@nanmean)];

out =
1            3       4.6667
1           16       3.6667
2            4            2
2           11       2.33
``````
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This should be compatible with Eitan's manswer to your previous question as well (i.e. when you want to mix the two): stackoverflow.com/questions/16086874/… –  Dan Apr 19 '13 at 15:30
That's the one! Thanks Oleg! –  8eastFromThe3ast Apr 23 '13 at 12:45

This is an ideal opportunity to use sparse matrix math.

``````x = [ 1 2 5;
1 2 7;
2 4 6;
3 4 6;
1 4 8;
2 4 8;
1 1 10]; % for example

SM = sparse(x(:,1),x(:,2), x(:,3);
disp(SM)
``````

Result:

``````(1,1)   10
(1,2)   12
(1,4)    8
(2,4)   14
(3,6)    7
``````

As you can see, we did the "accumulate same indices into same container" in one fell swoop. Now you need to know how many elements you have:

``````NE = sparse(x(:,1), x(:,2), ones(size(x(:,1))));
disp(NE);
``````

Result:

``````(1,1)   1
(1,2)   2
(1,4)   1
(2,4)   2
(3,6)   1
``````

Finally, you divide one by the other to get the mean (only use elements that have a value):

``````matrixMean = SM;
nz = find(NE>0);
matrixMean(nz) = SM(nz) ./ NE(nz);
``````

If you then `disp(matrixMean)`, you get

``````(1,1)    10
(1,2)     6
(1,4)     8
(2,4)     7
(3,6)     7
``````

If you want to access the individual elements differently, then after you have computed SM and NE you can do

``````[i j n] = find(NE);
matrixMean = SM(i,j)./NE(i,j);
disp([i(:) j(:) nonzeros(matrixMean)]);
``````
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