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
```

`as.matrix(v)`

isn't an option because it's a large, sparse matrix? – David Robinson Aug 6 '12 at 16:27