I have some functional code that I'm trying to speed up by eliminating the for loop.

I have a set of data in x,y pairs as two vectors, so x(k) and y(k) form a pair. I also have a set of bin edges (xe). For every bin j, there is a set of x values in that bin, defined by xe(j) <= x(k) < xe(j+1). For each bin, I would like to find the mean and standard deviation of all y(k) with x(k) in that bin.

MATLAB code that accomplishes this is below:

```
[meany, standardeviation] = ystatsvsx (xdata, ydata, xe)
meany = zeros([size(ydata,1) (length(xe)-1)]);
standarddeviation = meany;
[numx,bin] = histc(xdata, xe);
for j = 1:(length(xe) - 1)
inds = bin == j;
meany(j) = mean(ydata(inds));
standarddeviation(j) = std(ydata(inds));
end
```

When xe is large, this function becomes slow. Does anyone have any suggestiosn about how to vectorize this code to eliminate the for loop? The number of data points in a given bin (numx) is variable.

One caveat: length(xe)*length(xdata) in these cases is very large (length(xdata) is always much larger than length(xe)), so it is not possible to use repmat to create a length(xe) x length(xdata) matrix.