Create/deal big binary sparse matrices
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Hi, I'm dealing with really big binary sparse matrices and I need to manipulate them (i.e allocate memory, multiplication etc.) I'm aware of the function sparse and I use it in my code. the first step is taking 4.5 second with parameters (t=8000,n0=2000).
And with bigger matrices, it takes about 2min whereas the rest of the code is taking about 5secs...
The question how one can efficiently allocate/create (a big) random binary sparse matrix?
tic
%%step 1 create random matrix with proba p=0.05
%I allocated first with sparse(t,n0) but the result was the same
%tried also false(t,n0)
A=rand(t,n0)<p;
toc
%step 3
tic
%finding number of rows of A that have 1 at both column i and column j
%by multiplying it with its transpose
B=sparse(A)'*sparse(A);
%getting numbers (i.e counts)
W=triu(B,1);
edges=(W>=meanvalue);
toc
Thanks in advance for your time and help.
1 Kommentar
Bruno Luong
am 28 Feb. 2011
It is not clear to me what take time. One thing for sure: don't use SPARSE as you did: i.e., generate full matrix then convert with sparse command. The efficient SPARSE command is with the form
SPARSE(rows, cols, values, ...). DO GENERATE SPARSE from the start.
Antworten (3)
Walter Roberson
am 28 Feb. 2011
I doubt it is the memory allocation or creation of the sparse matrix that is taking the time. I would think it much more likely that it is the matrix multiplication that is taking the time, as that will result in a matrix which is less sparse than the original matrix.
4 Kommentare
Bruno Luong
am 28 Feb. 2011
See my comment above.
Instead of
A=rand(t,n0)<p;
Use sparse directly
A = logical(sprand(t, n0, p)); % OR
A = spones(sprand(t, n0, p));
Bruno
3 Kommentare
Bruno Luong
am 28 Feb. 2011
Your timing does not mean much:
1) the full matrix cannot even be use for large dimension
2) the time needed later to convert to sparse is not taken into account.
Bruno Luong
am 28 Feb. 2011
m = 80000;
n = 10000;
p = 0.001;
nel = m*n*p;
rows = ceil(m*rand(1,nel));
cols = ceil(n*rand(1,nel));
A = sparse(rows, cols, 1);
B = A'*A;
...
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