I have written a code in MATLAB that allows me to generate a random graph of n vertices, each with c fixed neighbours without loops (note the edges are directed, thus “a connected to b” does not imply “b connected to a”).
However, it is terribly inefficient, especially when I need to it work on magnitudes such as n = 10000 and c = 1000. I was wondering if anyone could optimize it big time, or suggest anything constructive?
function [M]=matsrand(n,c)
MM=0; %arbitrary starting value
while MM ~=n*c
M = sparse(zeros(n));
ctin = zeros(1,n);
for i=1:n
rp = randperm(n); %generate vector of the randomly permuted order of n vertices
rp(rp==i)=[]; %get rid of itself to avoid self connection
noconnect=find(ctin(:)>=c); %generate list that i is not allowed to connect to
where=ismember(rp,noconnect); %returns 1 to the subset noconnect in rp
noconnectind=find(where);
rp(noconnectind(:))=[]; %remove the neurons i is not allowed to connect to
if length(rp)<c
break
else
r=rp(1:c);
end
M(i,r)=1;
ctin(r)=ctin(r)+1;
end
MM=sum(ctin);
end
This’ll speed up things a bit:
If memory isn’t an issue, I think you can replace the sparse matrix with an ordinary
zeros(n,n).Main problem still is you have to hit that lucky combination.