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I'm trying to take an element-wise maximum of two matrices of class "Matrix" (sparse matrices). I've tried the pmax(...) function, which seems to work on two 'normal' matrices, but when I pass in two sparse matrices, it gives me the following error on R 2.15.

library(Matrix)
# Loading required package: lattice
v=Matrix(0,100,100); v[1,1]=1; 
x=v
pmax(v,x)
# Error in pmax(v, x) : (list) object cannot be coerced to type 'logical'
# In addition: Warning message:
# In any(nas) : coercing argument of type 'list' to logical
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Just to check: doing as.matrix(v) isn't an option because it's a large, sparse matrix? –  David Robinson Aug 6 '12 at 16:27
    
Also, how large/how sparse are we talking? –  David Robinson Aug 6 '12 at 16:29
    
too large to convert to a standard matrix -- it's 100,000 by 100,000 –  user1449378 Aug 6 '12 at 16:37
    
See my answer below –  David Robinson Aug 6 '12 at 16:38
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2 Answers

As you discovered pmax doesn't support sparse matrices. The reason is because cbind doesn't support the sparse matrices. The author of Matrix has written cBind which is the equivalent of cbind. If you change one line in the pmax function, it works correctly:

pmax.sparse=function (..., na.rm = FALSE) 
{
    elts <- list(...)
    if (length(elts) == 0L) 
        stop("no arguments")
    if (all(vapply(elts, function(x) is.atomic(x) && !is.object(x), 
        NA))) {
        mmm <- .Internal(pmax(na.rm, ...))
    }
    else {
        mmm <- elts[[1L]]
        attr(mmm, "dim") <- NULL
        has.na <- FALSE
        for (each in elts[-1L]) {
            attr(each, "dim") <- NULL
            l1 <- length(each)
            l2 <- length(mmm)
            if (l2 < l1) {
                if (l2 && l1%%l2) 
                  warning("an argument will be fractionally recycled")
                mmm <- rep(mmm, length.out = l1)
            }
            else if (l1 && l1 < l2) {
                if (l2%%l1) 
                  warning("an argument will be fractionally recycled")
                each <- rep(each, length.out = l2)
            }
            # nas <- cbind(is.na(mmm), is.na(each))
            nas <- cBind(is.na(mmm), is.na(each)) # Changed row.
            if (has.na || (has.na <- any(nas))) {
                mmm[nas[, 1L]] <- each[nas[, 1L]]
                each[nas[, 2L]] <- mmm[nas[, 2L]]
            }
            change <- mmm < each
            change <- change & !is.na(change)
            mmm[change] <- each[change]
            if (has.na && !na.rm) 
                mmm[nas[, 1L] | nas[, 2L]] <- NA
        }
    }
    mostattributes(mmm) <- attributes(elts[[1L]])
    mmm
}

pmax.sparse(x,v)
# Works fine.
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When I test your method on large sparse matrices, I get Cholmod error 'problem too large'. Even with a smaller problem, I get <sparse>[ <logic> ] : .M.sub.i.logical() maybe inefficient warnings and the output is not the expected pmax. Any idea? –  flodel Aug 7 '12 at 5:51
    
This answer is actually incorrect. As you noted, the function does not work. The first problem is that the ! operator turns the sparse matrix into a dense matrix, by converting all empty cells to FALSE. I fixed this problem, but the next problem is that efficient indexing (by another sparse matrix of logical) has not been implemented in the package. It seems like it would be an easy fix, not that I have given it a try. –  nograpes Aug 10 '12 at 19:54
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Try this. It concatenates the matrices summary outputs, then takes the max after grouping by (i, j) pairs. It is also generalizable in the sense you can do any type of element-wise operation, just replace max with the function of your choice (or write a general function that takes a FUN argument).

pmax.sparse <- function(..., na.rm = FALSE) {

   # check that all matrices have conforming sizes
   num.rows <- unique(sapply(list(...), nrow))
   num.cols <- unique(sapply(list(...), ncol))
   stopifnot(length(num.rows) == 1)
   stopifnot(length(num.cols) == 1)

   cat.summary <- do.call(rbind, lapply(list(...), summary))
   out.summary <- aggregate(x ~ i + j, data = cat.summary, max, na.rm)

   sparseMatrix(i = out.summary$i,
                j = out.summary$j,
                x = out.summary$x,
                dims = c(num.rows, num.cols))
}

If your matrices are so big and not sparse enough that this code is too slow for your need, I would consider a similar approach using data.table.

Here is an application example:

N <- 1000000
n <- 10000
M1 <- sparseMatrix(i = sample(N,n), j = sample(N,n), x = runif(n), dims = c(N,N))
M2 <- sparseMatrix(i = sample(N,n), j = sample(N,n), x = runif(n), dims = c(N,N))
M3 <- sparseMatrix(i = sample(N,n), j = sample(N,n), x = runif(n), dims = c(N,N))
system.time(p <- pmax.sparse(M1,M2,M3))
#   user  system elapsed 
#   2.58    0.06    2.65

The other proposed solution fails with:

Error in .class1(object) : 
  Cholmod error 'problem too large' at file ../Core/cholmod_dense.c, line 106
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thanks, this worked really well and is very efficient! –  user1449378 Aug 6 '12 at 17:53
    
@user1449378 Don't forget to accept (tick) an answer. –  Matt Dowle Aug 9 '12 at 17:49
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