I have a matrix A consisting of 200 vectors of size d.

I want that a matrix B consisting of 4096 vectors gets classified to these points according to the nearest distance rule.

Thus the result should have rows of size B having the id number ( from 1 to 200 ) to which it belongs.

I have written this code via `2 for`

loops and it takes lots of time for calculation.

```
for i = 1:4096
counter = 1;
vector1 = FaceImage(i,:);
vector2 = Centroids(1,:);
distance = pdist( [ vector1 ; vector2] , 'euclidean' );
for j = 2:200
vector2 = Centroids(j,:);
temp = pdist( [ vector1 ; vector2] , 'euclidean' );
if temp < distance
distance = temp;
counter = j;
end
end
Histogram( i ) = counter;
end
```

Can somebody help me out increasing the efficiency of the above code ... or perhaps suggest me an inbuilt function ?

Thanks