I have a function which does the following loop many, many times:

```
for cluster=1:max(bins), % bins is a list in the same format as kmeans() IDX output
select=bins==cluster; % find group of values
means(select,:)=repmat_fast_spec(meanOneIn(x(select,:)),sum(select),1);
% (*, above) for each point, write the mean of all points in x that
% share its label in bins to the equivalent row of means
delta_x(select,:)=x(select,:)-(means(select,:));
%subtract out the mean from each point
end
```

Noting that `repmat_fast_spec`

and `meanOneIn`

are stripped-down versions of `repmat()`

and `mean()`

, respectively, I'm wondering if there's a way to do the assignment in the line labeled (*) that avoids repmat entirely.

Any other thoughts on how to squeeze performance out of this thing would also be welcome.