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I have a sparse matrix in R

I now wish to perform nonnegative matrix factorization on R

data.txt is a text file i created using python, it consists of 3 columns where first column specifies the row number, second the column number and third the value


1 5 10
3 2 5
4 6 9

original data.txt contains 164009 rows which is data for 250000x250000 sparse matrix

I used NMF library and I am doing



it is giving me an error Error in function (classes, fdef, mtable): unable to find an inherited method for function nmf, for signature "dgCMAtrix", "missing", "missing"

could anyone help me figure out what am I doing wrong

share|improve this question
Why -1 reason ??? –  user1344389 Apr 21 '12 at 1:21
Give code to build an example sparse matrix, and (working) code to run your example. Do you really mean -> there, or should that be <- ? –  Matthew Lundberg Apr 21 '12 at 1:31
Question edited sorry my bad –  user1344389 Apr 21 '12 at 1:35
You're still missing a piece. I don't have data.txt. It's best to post R code that creates 'x', but posting example data itself is almost as easy to use. (I can't say about others, but I prefer to use example code without > prompt, so I can paste it right from the website into R.) –  Matthew Lundberg Apr 21 '12 at 1:41
the point is not that we don't know what structure data.txt would have, it's that providing a reproducible example lowers the barrier to providing questions enormously; rather than starting by constructing an example, would-be answerers can start right in on diagnosing/answering the question. Meet them halfway: tinyurl.com/reproducible-000 –  Ben Bolker Apr 21 '12 at 2:08

1 Answer 1

The first problem is that you are providing a dgCMatrix to nmf.

> class(R)
[1] "dgCMatrix"
[1] "Matrix"

The help is here:


See the Methods section. It wants a real matrix. Coercing with as.matrix is likely to not be of very much service to you, because of the number of entries.

Now, even with your example data, coercion to a matrix is insufficient as written:

> nmf(as.matrix(R))
Error: NMF::nmf : when argument 'rank' is not provided, argument 'seed' is required to inherit from class 'NMF'. See ?nmf.

Let's give it a rank:

> nmf(as.matrix(R),2)
Error in .local(x, rank, method, ...) : 
  Input matrix x contains at least one null row.

And indeed it does:

> R
4 x 6 sparse Matrix of class "dgCMatrix"

[1,] . . . . 10 .
[2,] . . . .  . .
[3,] . . 5 .  . .
[4,] . . . .  . 9
share|improve this answer
okay so what is the solution? are you saying that it is not possible? –  user1344389 Apr 21 '12 at 4:43
Your original data, presented as a matrix, may indeed be what you want (but no rank was specified in the question). Unfortunately, such a matrix won't likely fit in your memory. –  Matthew Lundberg Apr 21 '12 at 4:55
okay so if your answer is not an answer can you please delete it so that others wont misunderstand this for an answer –  user1344389 Apr 21 '12 at 4:57
You asked, "What am I doing wrong." In order for someone to answer how to do it "right," you'll need to tell us what you're actually trying to do. –  Matthew Lundberg Apr 21 '12 at 13:37
@MatthewLundberg: The problem is that your 'solution' does not work for a 250000x250000 sparse matrix. Coercing it to a dense matrix will let you run out of memory (unless you have 1 TB of RAM ... :-) –  f3lix Jun 29 '13 at 13:00

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