Fast way to retrieve nonzero entries of each row in a sparse matrix
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I'm working with very large sparse matrices (10's of thousands to millions of entries) and I'd like to efficiently retrieve and store the unique nonzero entries of each row. For my application, the rows will have anywhere between 1 and 9 unique and nonzero entries.
I've decided to utilize "sprand" for an example - I'm fairly new to using sparse matrices and am not the best programmer so forgive my naivety - and I've tried to choose a density within the aforementioned range. My code is:
numrows = 1000000;
numcols = 1000000;
density = numrows^(-1.87);
num_entries_per_row = numrows*numcols*density % This is an average.
rsm = sprand(numrows,numcols,density); % random sparse matrix
tic
out = cell(numrows,1); % output.
for idx = 1:numrows
[~,~,value] = find(rsm(idx,:));
out{idx} = unique(value);
end
toc
I've had this running for a few minutes and still no result. Previously when the number of rows and columns were both 100,000 the result took about 32 seconds - way too slow for my purposes. Clearly not the fastest, but it is simple. Is there a better and more clever way to achieve this result in MATLAB?
2 Commenti
James Tursa
il 31 Ago 2017
Modificato: James Tursa
il 31 Ago 2017
Can you double check your density equation? It seems to produce a very small number compared to what you seem to be working with.
Also, do the resulting values need to retain any order or can they be sorted?
And can you build and run mex routines?
The idea would be to transpose the matrix, then sort it, then have a mex routine do the unique calculation by column. Result would be a single matrix with the unique row data contained in the columns of the result.
Are you sure you want a cell array containing millions of elements?
Risposta accettata
Matt J
il 31 Ago 2017
Modificato: Matt J
il 31 Ago 2017
[I,~,values]=find(rsm);
u=unique([I,values],'rows');
N=size(u,1);
tmp=diff([0;find(diff(u(:,1)));N]);
out=mat2cell(u(:,2),tmp);
5 Commenti
James Tursa
il 31 Ago 2017
With that timing result, I think we can dispense with the mex entirely. Transposing the matrix, working with columns, and keeping the result in a sparse matrix rather than millions of cell elements seems to work out just fine.
Matt J
il 31 Ago 2017
Modificato: Matt J
il 31 Ago 2017
keeping the result in a sparse matrix rather than millions of cell elements
With further testing, I'm actually seeing that cells overtake matrices in efficiency when the density of rsm gets above a certain threshold. Not sure why...
numrows = 1000000;
numcols = 1000000;
rsm = sprand(numrows,numcols,30/numcols);
rsm0=rsm.';
tic;
rsm=sort(rsm0);
[~,J,values]=find(rsm);
u=unique([J,values],'rows');
N=size(u,1);
tmp=diff([0;find(diff(u(:,1)));N]);
out1=mat2cell(u(:,2),tmp);
toc;
%Elapsed time is 8.225773 seconds.
tic;
rsm=sort(rsm0);
[I,J,values]=find(rsm);
[u,k]=unique([J,values],'rows');
out2=sparse(I(k),u(:,1),u(:,2));
toc;
%Elapsed time is 16.365144 seconds.
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