Adding sparse matrices efficiently?
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Mohammod Minhajur Rahman
2018 年 11 月 17 日
編集済み: James Tursa
2020 年 7 月 16 日
Hi, I have a cell array which consists of many sparse matrices. For example:
N.B. In my original problem each sparse matrix is about 4000*4000 in size and has many zero entries
A{1}=sparse(magic(150));
A{2}=sparse(magic(150));
A{3}=sparse(magic(150));
A{4}=sparse(magic(150));
....
% I want something like:
KK = A{1}+A{2}+A{3}+....
% KK should be a sparse matrix of 150*150
% Adding them in a loop is very time consuming
% I tried the following but did not work:
KK = sum(cat(2,KC{:}),3); % or 1,2 as the sum dimension
% also
KK = sum([KC{:}]); % gives a vector
2 件のコメント
David Goodmanson
2018 年 11 月 17 日
Hi Mohammod,
It's not going to be a good idea to use sparse(magic(N)) as a benchmark for timing. This matrix is stored in the sparse convention but is absolutely not sparse, since it has no nonzero elements at all. Sparse has to do a lot of work in that case.
sparse(magic(N)) + sparse(magic(N)) takes more time than the addition of the full matrices, magic(N) + magic(N).
採用された回答
James Tursa
2018 年 11 月 17 日
In general, everytime you add two sparse matrices together a bunch of sparse index sorting etc has to take place first and then the result of the additions gets put into new memory. Doing this at each iteration is what is slowing you down.
If your matrices are only 4000x4000, then maybe adding the individual matrices into a full matrix would be faster since there wouldn't be any need to sort the combined indexes or to put the result into new memory. You could try two different options with this approach.
1) Start with a full 0's matrix and add your sparse matrices into it. A good underlying algorithm will simply add the sparse stuff into the full matrix at the appropriate spots without any index sorting needed. So:
result = zeros(4000,4000);
for k=1:whatever
result = result + A{k};
end
result = sparse(result);
2) Do the equivalent of the above inside a mex routine. That way you could ensure that no large extraneous data copying was taking place, but everything was simply added directly into the result. This mex routine would not be too difficult to write. If you opt for this method let me know and I can help.
3 件のコメント
Jin Yang
2020 年 7 月 16 日
James, thank you for this answering! Is there anything we need to take care to write a c mex file with cell data?
James Tursa
2020 年 7 月 16 日
編集済み: James Tursa
2020 年 7 月 16 日
Nothing special needed. Just pass in the cell array, create the full array inside the mex routine, and write a loop that does the adding. You could sparse the end result either inside or outside the mex routine.
その他の回答 (1 件)
Bruno Luong
2018 年 11 月 17 日
編集済み: Bruno Luong
2018 年 11 月 17 日
The fatest way to add sparse matrices is to build the sum from scratch.
It takes 4 second for 1000 random matrices of 4000x4000 with density 1e-3.
I = [];
J = [];
V = [];
n = 0;
for k = 1:length(A)
[i,j,v] = find(A{k});
p = n + numel(i);
m = numel(I);
if p > m
m = max(p,2*m);
I(m) = 0;
J(m) = 0;
V(m) = 0;
end
idx = (n+1:p);
I(idx) = i;
J(idx) = j;
V(idx) = v;
n = p;
end
idx = (n+1:numel(I));
I(idx) = [];
J(idx) = [];
V(idx) = [];
[m,n] = size(A{1});
SUM = sparse(I,J,V,m,n)
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