I'm embarrassed to post this - I'm sure there must be a simpler way (there is a **MUCH** simpler way - see my december update at the bottom of the answer), but this will do the job:

```
A = [1 2 3; 4 5 6];
n = size(A, 2);
B = A(:, reshape(ones(n, 1) * (1:n), 1, n^2)) .* repmat(A, 1, n);
Soln = [A, B(:, logical(reshape(tril(toeplitz(ones(n, 1))), 1, n^2)'))];
```

The calculation is not efficient, since in the `B`

step I actually calculate double the number of combinations that I need (ie I get c1.*c1, c1.*c2, c1.*c3, c2.*c1, c2.*c2, c2.*c3, c3.*c1, c3.*c2, c3.*c3), and then in the second step I pull out only the columns that I need (eg I get rid of c3.*c1 as I've already got c1.*c3 and so on).

**UPDATE:** Was just out driving and a much better method occurred to me. You just need to construct two index vectors of the form: `I1 = [1 1 1 2 2 3]`

and `I2 = [1 2 3 2 3 3]`

, then `(A(:, I1) .* A(:, I2))`

will get you all the column products you are after. I'm away from my computer at the moment, but will come back later and work out a general way to construct the index vectors. I think it can be fairly easily accompished using the `tril(toeplitz)`

construction. Cheers. Will update in a few hours.

**UPDATE:** Rody's second solution (+1) is exactly what I had in mind with my previous update so I won't bother repeating what he has done there now. Yoda's is quite neat too actually, so another +1.

**DECEMBER UPDATE:** Funnily enough, after working on it here, I had to revisit this problem for my own research (coding up White's test for heteroscedasticity). I'm actually favoring a new approach now, recommended (somewhat cryptically) by @slayton in the comments. Specifically, using `nchoosek`

. My new solution looks like this:

```
T = 20; K = 4;
X = randi(100, T, K);
Index = nchoosek((1:K), 2);
XAll = [X, X(:, Index(:, 1)) .* X(:, Index(:, 2)), X.^2];
```

`nchoosek`

yields exactly the indices we need to construct the cross-products quickly and easily!

`nchoosek`

– slayton Oct 9 '12 at 0:36