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I'm subsampling rows from a dataframe with c("x","y","density") columns at a variety of c("s_size","reps"). Reps= replicates, s_size= number of rows subsampled from the whole dataframe.

> head(data_xyz)
   x y density
1  6 1       0
2  7 1   17600
3  8 1   11200
4 12 1   14400
5 13 1       0
6 14 1    8000



 #Subsampling###################
    subsample_loop <- function(s_size, reps, int) {
      tm1 <- system.time( #start timer
    {
      subsample_bound = data.frame()
    #Perform Subsampling of the general 
    for (s_size in seq(1,s_size,int)){
      for (reps in 1:reps) {
        subsample <- sample.df.rows(s_size, data_xyz)
         assign(paste("sample" ,"_","n", s_size, "_", "r", reps , sep=""), subsample)
        subsample_replicate <- subsample[,] #temporary variable
        subsample_replicate <- cbind(subsample, rep(s_size,(length(subsample_replicate[,1]))),
                                     rep(reps,(length(subsample_replicate[,1]))))
        subsample_bound <- rbind(subsample_bound, subsample_replicate)

      }
    }
    }) #end timer
      colnames(subsample_bound) <- c("x","y","density","s_size","reps")
    subsample_bound
    } #end function

Here's the function call:

    source("R/functions.R")
    subsample_data <- subsample_loop(s_size=206, reps=5, int=10)

Here's the row subsample function:

# Samples a number of rows in a dataframe, outputs a dataframe of the same # of columns
# df Data Frame
# N number of samples to be taken
sample.df.rows <- function (N, df, ...) 
  { 
    df[sample(nrow(df), N, replace=FALSE,...), ] 
  } 

It's way too slow, I've tried a few times with apply functions and had no luck. I'll be doing somewhere around 1,000-10,000 replicates for each s_size from 1:250.

Let me know what you think! Thanks in advance.

========================================================================= UPDATE EDIT: Sample data from which to sample: https://www.dropbox.com/s/47mpo36xh7lck0t/density.csv

Joran's code in a function (in a sourced function.R file):

foo <- function(i,j,data){
  res <- data[sample(nrow(data),i,replace = FALSE),]
  res$s_size <- i
  res$reps <- rep(j,i)
  res
}
resampling_custom <- function(dat, s_size, int, reps) {
  ss <- rep(seq(1,s_size,by = int),each = reps)
  id <- rep(seq_len(reps),times = s_size/int)
  out <- do.call(rbind,mapply(foo,i = ss,j = id,MoreArgs = list(data = dat),SIMPLIFY = FALSE))
}

Calling the function

set.seed(2)
out <- resampling_custom(dat=retinal_xyz, s_size=206, int=5, reps=10)

outputs data, unfortunately with this warning message:

Warning message:
In mapply(foo, i = ss, j = id, MoreArgs = list(data = dat), SIMPLIFY = FALSE) :
  longer argument not a multiple of length of shorter
share|improve this question
    
If you've tried *apply functions, why not show us that code? Also, do you have hardware that would allow a parallel implementation? –  Thomas Jun 14 '13 at 23:49
    
I have parallel compatible hardware- how would you recommend I approach this problem? –  user2438134 Jun 15 '13 at 7:31
    
Start with joran's answer, then see if you want further optimization from package parallel. –  Thomas Jun 15 '13 at 13:45

1 Answer 1

up vote 3 down vote accepted

I put very little thought into actually optimizing this, I was just concentrating on doing something that's at least reasonable while matching your procedure.

Your big problem is that you are growing objects via rbind and cbind. Basically anytime you see someone write data.frame() or c() and expand that object using rbind, cbind or c, you can be very sure that the resulting code will essentially be the slowest possible way of doing what ever task is being attempted.

This version is around 12-13 times faster, and I'm sure you could squeeze some more out of this if you put some real thought into it:

s_size <- 200
int <- 10
reps <- 30

ss <- rep(seq(1,s_size,by = int),each = reps)
id <- rep(seq_len(reps),times = s_size/int)

foo <- function(i,j,data){
    res <- data[sample(nrow(data),i,replace = FALSE),]
    res$s_size <- i
    res$reps <- rep(j,i)
    res
}

out <- do.call(rbind,mapply(foo,i = ss,j = id,MoreArgs = list(data = dat),SIMPLIFY = FALSE))

The best part about R is that not only is this way, way faster, it's also way less code.

share|improve this answer
    
i'm getting this warning error: Warning message: In mapply(foo, i = ss_id, j = rep_id, MoreArgs = list(data = dat), : longer argument not a multiple of length of shorter I want to be sure that this method generates the correct data. Thanks so much joran –  user2438134 Jun 18 '13 at 18:02
    
@user2438134 I get no warnings at all. I won't help any further unless you provide a reproducible example. –  joran Jun 18 '13 at 18:14
    
I added more info, :-) –  user2438134 Jun 18 '13 at 23:24
    
@user2438134 That was very easy to debug. You should learn how to use browser(). Just change times = s_size/int to times = ceiling(s_size/int). –  joran Jun 19 '13 at 1:54

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