# Speed up assembling matrix by interleaving vectors?

I have two vectors of arbitrary and equal length

``````a <- c(0.8,0.8,0.8)
b <- c(0.4,0.4,0.4)
n <- length(a)
``````

From these I need to assemble an `2n` by `2n` matrix of the form:

``````x = [1-a1  b1    1-a2  b2    1-a3  b3
a1    1-b1  a2    1-b2  a3    1-b3
1-a1  b1    1-a2  b2    1-a3  b3
a1    1-b1  a2    1-b2  a3    1-b3
1-a1  b1    1-a2  b2    1-a3  b3
a1    1-b1  a2    1-b2  a3    1-b3]
``````

I currently do this using

``````x <- matrix(rep(as.vector(rbind(
c(1-a,a),
c(b, 1-b))),
n),
ncol=n*2, byrow=TRUE)
``````

How can I speed up this operation? Profiling indicates that `matrix` is taking the most time:

``````Rprof("out.prof")
for (i in 1:100000) {

x <- matrix(rep(as.vector(rbind(
c(1-a,a),
c(b, 1-b))),
n),
ncol=n*2, byrow=TRUE)

}
Rprof(NULL)
summaryRprof("out.prof")

##\$by.self
##            self.time self.pct total.time total.pct
##"matrix"         1.02    63.75       1.60    100.00
##"rbind"          0.24    15.00       0.36     22.50
##"as.vector"      0.18    11.25       0.54     33.75
##"c"              0.10     6.25       0.10      6.25
##"*"              0.04     2.50       0.04      2.50
##"-"              0.02     1.25       0.02      1.25
##
##\$by.total
##            total.time total.pct self.time self.pct
##"matrix"          1.60    100.00      1.02    63.75
##"as.vector"       0.54     33.75      0.18    11.25
##"rbind"           0.36     22.50      0.24    15.00
##"c"               0.10      6.25      0.10     6.25
##"*"               0.04      2.50      0.04     2.50
##"-"               0.02      1.25      0.02     1.25
##
##\$sample.interval
##[1] 0.02
##
##\$sampling.time
##[1] 1.6
``````
-
Can we assume that all elements of `a` are equal to one another and that all elements of `b` are equal to one another? –  David J. Harris Nov 12 '12 at 20:20
No, the elements of `a` and `b` are not always equal. Thanks for clarifying –  Noam Ross Nov 12 '12 at 20:22
Also, what's n.classes? –  David J. Harris Nov 12 '12 at 20:28
Whoops. Should be `n`. Fixing. –  Noam Ross Nov 12 '12 at 20:30
Can I also assume that you actually care about performance on much bigger matrices, or is `n == 3` an important use case for you? –  David J. Harris Nov 12 '12 at 20:45

I don't think there is an alternative to `matrix` being the slowest part of your profile, but you can definitely save a little time by optimizing the rest. For example:

``````x <- matrix(rbind(c(1-a,a), c(b, 1-b)), 2*n, 2*n, byrow=TRUE)
``````

Also, although I would not recommend it, you can save a little extra time by using the Internal matrix function:

``````x <- .Internal(matrix(rbind(c(1-a,a), c(b, 1-b)),
n*2, n*2, TRUE, NULL, FALSE, FALSE))
``````

Here are some benchmarks:

``````benchmark(
method0 = matrix(rep(as.vector(rbind(c(1-a,a), c(b, 1-b))), n),
ncol=n*2, byrow=TRUE),
method1 = matrix(rbind(c(1-a,a), c(b, 1-b)), 2*n, 2*n, byrow=TRUE),
method2 = .Internal(matrix(rbind(c(1-a,a), c(b, 1-b)),
n*2, n*2, TRUE, NULL, FALSE, FALSE)),
replications = 100000,
order = "relative")

#      test replications elapsed relative user.self sys.self user.child sys.child
# 3 method2       100000    1.00     1.00      0.99        0         NA        NA
# 2 method1       100000    1.13     1.13      1.12        0         NA        NA
# 1 method0       100000    1.46     1.46      1.46        0         NA        NA
``````
-
Note that you can't use `.Internal` in packages hosted on CRAN. See the CRAN Repository Policy. –  Joshua Ulrich Nov 12 '12 at 22:13
That's in part why I said I would not recommend it. My biggest concern would be that the R developers are free to make changes to these internals, and it could cause this code to break in the future. –  flodel Nov 12 '12 at 22:15
Yes, I figured that was the reason. I just wanted to be explicit. ;) –  Joshua Ulrich Nov 12 '12 at 22:35
I get some extra speeding by compiling the function using `compiler::cmpfun()`. Not as much as using .Internal, but better. –  Noam Ross Nov 12 '12 at 22:48

I get a small speedup with the following:

``````f = function(a, b, n){
z = rbind(
c(rbind(1 - a, b)),
c(rbind(a, 1 - b))
)

do.call(rbind, lapply(1:n, function(i) z))
}
``````

I'll keep looking.

Edit I'm stumped. If this isn't good enough, I'd recommend inlining some rcpp.

-
On my machine, this is almost twice as slow as the OP's version. –  flodel Nov 12 '12 at 22:01
Weird. On my machine, `system.time(replicate(100000, f(a, b, n)))` takes 2 seconds and `system.time(replicate(100000, g(a, b, n)))` takes 3.5, where g is what Noam wrote. –  David J. Harris Nov 12 '12 at 22:06
Yours takes less than a second, though. Nice optimization. –  David J. Harris Nov 12 '12 at 22:18