>>>>> "JP" == Jeszenszky Peter <jeszenszky.pe...@inf.unideb.hu> >>>>> on Mon, 7 Dec 2009 22:12:43 +0100 writes:
JP> Hello, JP> Thank you for your reply. The suggested conversion trick with a slight JP> modification does the job. JP> I hope, the svm function of the e1071 package will support slam sparse JP> matrices directly. I think that this would be quite a reasonable feature. I strongly disagree. 'Matrix' is a recommended package and most feature-complete for sparse matrices and their arithmetic. While it is known that parts of its functionality could and maybe should be rendered to work more efficiently, it is very reasonable and sensible that other sparse matrix formats --- if needed at all (they may make sense in a limited context) --- have utilities to convert from and to the "sparseMatrix" (sub)classes in 'Matrix'. Ingo provided code to do exactly that. Regards, Martin Maechler, ETH Zurich JP> Furthermore, there are developers who participate in the development of JP> both the slam and the e1071 packages. JP> Best regards, JP> Peter Jeszenszky JP> -----Ingo Feinerer <feine...@logic.at> ezt írta: ----- JP> Címzett: r-devel@r-project.org JP> Feladó: Ingo Feinerer <feine...@logic.at> JP> Dátum: 2009/12/05 10:43de. JP> Másolat: Jeszenszky Peter <jeszenszky.pe...@inf.unideb.hu> JP> Tárgy: Re: tm and e1071 question JP> On Fri, Dec 04, 2009 at 02:21:52PM +0100, Achim Zeileis wrote: >> I would like to use the svm function of the e1071 package for text >> classification tasks. Preprocessing can be carried out by using the >> excellent tm text mining package. JP> :-) >> TermDocumentMatrix and DocumentTermMatrix objects of the package tm >> are currently implemented based on the sparse matrix data structures >> provided by the slam package. >> >> Unfortunately, the svm function of the e1071 package accepts only sparse >> matrices of class Matrix provided by the Matrix package, or of class >> matrix.csr as provided by the package SparseM. >> >> In order to train an SVM with a DocumentTermMatrix object the latter >> must be converted to a matrix.csr sparse matrix structure. However, none >> of the publicly available packages of CRAN provides such a conversion >> function. It is quite straightforward to write the conversion function, >> but it would be much confortable to pass slam sparse matrix objects >> directly to the svm function. JP> You are right. If you have small matrices as(as.matrix(m), "Matrix") JP> will work. Then there exists some (non published experimental) code in JP> the slam package for conversion to Matrix format (located in JP> slam/work/Matrix.R): JP> setAs("simple_triplet_matrix", "dgTMatrix", JP> function(from) { JP> new("dgTMatrix", JP> i = as.integer(from$i - 1L), JP> j = as.integer(from$j - 1L), JP> x = from$v, JP> Dim = c(from$nrow, from$ncol), JP> Dimnames = from$dimnames) JP> }) JP> setAs("simple_triplet_matrix", "dgCMatrix", JP> function(from) { JP> ind <- order(from$j, from$i) JP> new("dgCMatrix", JP> i = from$i[ind] - 1L, JP> p = c(0L, cumsum(tabulate(from$j[ind], from$ncol))), JP> x = from$v[ind], JP> Dim = c(from$nrow, from$ncol), JP> Dimnames = from$dimnames) JP> }) JP> which allows then: JP> class(m) <- "simple_triplet_matrix" JP> as(m, "dgTMatrix") JP> as(m, "dgCMatrix") >> Do you plan to add slam sparse matrix support to the e1071 package? JP> I cannot answer this since I am neither directly involved in the e1071 JP> nor in the slam package. JP> Best regards, Ingo Feinerer JP> -- JP> Ingo Feinerer JP> Vienna University of Technology JP> http://www.dbai.tuwien.ac.at/staff/feinerer JP> ______________________________________________ JP> R-devel@r-project.org mailing list JP> https://stat.ethz.ch/mailman/listinfo/r-devel ______________________________________________ R-devel@r-project.org mailing list https://stat.ethz.ch/mailman/listinfo/r-devel