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sparseLRMatrix provides a single matrix S4 class called
sparseLRMatrix which represents matrices that can be
expressed as the sum of sparse matrix and a low rank matrix. We also
provide an efficient SVD method for these matrices by wrapping the
RSpectra SVD implementation.
Eventually, we will fully subclass Matrix::Matrix
objects, but the current implementation is extremely minimal.
You can install the released version of sparseLRMatrix from CRAN with:
# install.packages("remotes")
remotes::install_github("RoheLab/sparseLRMatrix")library(sparseLRMatrix)
#> Loading required package: Matrix
library(RSpectra)
set.seed(528491)
n <- 50
m <- 40
k <- 3
A <- rsparsematrix(n, m, 0.1)
U <- Matrix(rnorm(n * k), nrow = n, ncol = k)
V <- Matrix(rnorm(m * k), nrow = m, ncol = k)
# construct the matrix, which represents A + U %*% t(V)
X <- sparseLRMatrix(sparse = A, U = U, V = V)
s <- svds(X, 5) # efficientAnd a quick sanity check
Y <- A + tcrossprod(U, V)
s2 <- svds(Y, 5) # inefficient, but same calculation
# singular values match up, you can check for yourself
# that the singular vectors do as well!
all.equal(s$d, s2$d)
#> [1] TRUEThese binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.