6

I have 2 numeric vectors, one stores values to calculate maximum from, another lengths of a rolling window to calculate those maximums on a rolling basis. Below is some sample code. Generally I'm trying to speed up the code inside system.time. Is there some ready function or vectorized way to do the same thing?

a <- rep(1:5,20000)
set.seed(123)
b <- rep(sample(1:50),2000)

system.time({
out <- vector(mode='numeric', length=NROW(a))
for(i in seq(a)) {
  if (i-b[i]>=0) out[i] <- max(a[(i-b[i]+1):i])
  else out[i] <- NA
}
})
1
  • +1 Good question. This is an interesting problem to try and optimise! Apr 26, 2013 at 13:29

2 Answers 2

1

Managed to vectorize parts of it:

Original -

system.time({
  out <- vector(mode='numeric', length=NROW(a))
  for(i in seq(a)) {
    if (i-b[i]>=0) out[i] <- max(a[(i-b[i]+1):i])
    else out[i] <- NA
  }
})
## user  system elapsed 
## 0.64    0.00    0.64 

Slightly vectorized -

system.time({
  nr <- NROW(a)
  out <- rep(NA,nr)
  m <- 1:nr - b + 1
  n <- (1:nr)[m>0]

  for(i in n)
    out[i] <- max(a[m[i]:i])
})
## user  system elapsed 
## 0.39    0.00    0.39 
0
0

You can vectorise the parts of this problem, especially where you need to find out the starting index position in a (I called this str) and the end of the window ( end ), but I have to use a looping construct to apply those index positions to a to take the max using mapply. Like so:

x <- seq_len( length(a) )
end <- which( x-b > 0 )
str <- end - b[end]
res <- a
res[ - end ] <- NA
res[end] <- mapply( function(x,y) max( a[ x:y ] ) , str , end )

And comparing with @e4e5f4 's answer:

identical( res , out )
[1] TRUE

However it's not quite as fast:

user  system elapsed 
0.46    0.00    0.47

If there was a way to vectorise the last operation then this would be really fast, but I can't think of any way to do this at the moment!

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.