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I have two vector e and g. I want to know for each element in e the percentage of elements in g that are smaller. One way to implement this in R is:

set.seed(21)
e <- rnorm(1e4)
g <- rnorm(1e4)
mf <- function(p,v) {100*length(which(v<=p))/length(v)}
mf.out <- sapply(X=e, FUN=mf, v=g)

With large e or g, this takes a lot of time to run. How can I change or adapt this code to make this run faster?

Note: The mf function above is based on code from the mess function in the dismo package.

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You could change mf to mf <- function(p,v){100*mean(v<=p)} but I'm not sure how much that will help. –  Dason Oct 19 '12 at 20:44
    
Thanks Dason, but that seems to take more time –  Paulo Oct 19 '12 at 20:50
    
vapply instead of sapply will probably help. –  Matthew Plourde Oct 19 '12 at 20:50
    
@Paulo Does it really? It takes less time on my system... –  Dason Oct 19 '12 at 22:58
    
@Dason, no, it doesn't, you were right, your solution takes less time. I must have made a mistake when testing yesterday, sorry. –  Paulo Oct 20 '12 at 9:33

1 Answer 1

up vote 8 down vote accepted

The reason this is so slow is because you're calling your function length(e) times. It doesn't make a large difference for small vectors, but the overhead from R function calls really starts to add up with larger vectors.

Normally, you would need to move this to compiled code, but luckily you can use findInterval:

set.seed(21)
e <- rnorm(1e4)
g <- rnorm(1e4)
O <- findInterval(e,sort(g))/length(g)

# Now for some timings:
f <- function(p,v) mean(v<=p)
system.time(o <- sapply(e, f, g))
#   user  system elapsed 
#   0.95    0.03    0.98
system.time(O <- findInterval(e,sort(g))/length(g))
#   user  system elapsed 
#      0       0       0 
identical(o,O)  # may be FALSE
all.equal(o,O)  # should be TRUE

# How fast is this on large vectors?
set.seed(21)
e <- rnorm(1e7)
g <- rnorm(1e7)
system.time(O <- findInterval(e,sort(g))/length(g))
#   user  system elapsed 
#  22.08    0.08   22.31
share|improve this answer
    
Thanks @Joshua , great answer. The speed improvement is amazing. One small correction to get the same output as in the original function: findInterval(e,sort(g))/length(g) –  Paulo Oct 20 '12 at 19:12

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