There are at least two sparse matrix packages for R. I'm looking into these because I'm working with datasets that are too big and sparse to fit in memory with a dense representation. I want basic linear algebra routines, plus the ability to easily write C code to operate on them. Which library is the most mature and best to use?

So far I've found

- Matrix which has many reverse dependencies, implying it's the most used one.
- SparseM which doesn't have as many reverse deps.
- Various graph libraries probably have their own (implicit) versions of this; e.g. igraph and network (the latter is part of statnet). These are too specialized for my needs.

Anyone have experience with this?

From searching around RSeek.org a little bit, the Matrix package seems the most commonly mentioned one. I often think of CRAN Task Views as fairly authoritative, and the Multivariate Task View mentions Matrix and SparseM.

`spam`

too. The help says:`Differences with SparseM/Matrix are: (1) we only support (essentially) one sparse matrix format, (2) based on transparent and simple structure(s), (3) tailored for MCMC calculations within GMRF. (4) S3 and S4 like-"compatible" ... and it is fast.`

Reverse depends: CollocInfer, esd4all, fields, latticeDensity, LatticeKrig, pencopula, rworldmap, splm – Ben Bolker Apr 19 '12 at 18:09