# generating distanced matrix for an n-dimensional hypercube

is there any algorithm or method of generating the adjacency matrix for a hypercube for any dimension? say your input is 5 it would create a 5-dimensional hypercube

all i can find are sources from wiki

and wolfram

• What does "generating a 5-dimensional hypercube" mean? What data needs to be generated? – Oliver Charlesworth Apr 9 '12 at 17:20
• well i have to setup the n-dimensional hypercube to then take the adjacency matrix of it(which isn't hard once i have it setup) to then do some eigen value and linear algebra analysis of the adjacency matrix – pyCthon Apr 9 '12 at 17:23
• Ok. Then you should definitely edit your question to say that it's the adjacency matrix that you're after. Also, C and Matlab are very different languages; which one are you interested in? – Oliver Charlesworth Apr 9 '12 at 17:29
• you beat me to the edits xD thanks and yeah ican work with c or matlab fairly eaisly so that's why i put those – pyCthon Apr 9 '12 at 18:34

If you want to generate the vertices of a N-D unit hypercube, you can basically make an N-value truthtable. Here's some code I use for that:

``````function output = ttable(values)

output = feval(@(y)feval(@(x)mod(ceil(repmat((1:x(1))', 1, numel(x) - 1) ./ repmat(x(2:end), x(1), 1)) - 1, repmat(fliplr(y), x(1), 1)) + 1, fliplr([1 cumprod(y)])), fliplr(values));
end
``````

and to get the vertices of a 5-D hypercube you can call it like this:

``````vertices = ttable(ones(1, 5) * 2) - 1;
``````

From here you can calculate the adjacency matrix by finding all vertices that differ by only one bit, i.e.:

``````adj_list = zeros(2^5, 5);
• is the above line supposed to be `L1_dists = sum(adj_mat- repmat(vertices(v, :), 2^5, 1), 2);`? – pyCthon Apr 9 '12 at 18:37
• I'm pretty sure the rest is correct - it works for me. Did you copy the `ttable` function and run `vertices = ttable(ones(1, 5)*2)-1`? – Richante Apr 9 '12 at 19:38