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Let's assume I have the following data:

set.seed(1)
test <- data.frame(letters=rep(c("A","B","C","D"),10), numbers=sample(1:50, 40, replace=TRUE))

I want to know how many numbers whose letter is A are not in B, how many numbers of B are not in C and so on.

I came up with a solution for this using base functions split and mapply:

s.test <-split(test, test$letters)
notIn <- mapply(function(x,y) sum(!s.test[[x]]$numbers %in% s.test[[y]]$numbers), x=names(s.test)[1:3], y=names(s.test)[2:4])

Which gives:

> notIn
A B C 
9 7 7 

But I would also like to do this with dplyr or data.table. Is it possible?

share|improve this question
    
I don't think this can be done elegantly using plyr. See this answer stackoverflow.com/a/20174829/1201032 and the discussion I had with Hadley (plyr's author) in the comments. So the only way will be somewhat inefficient: for each letter, you will have to subset the whole test data to find the next letter. –  flodel Mar 23 at 1:31
1  
small improvement for your base code: mapply(function(x,y) sum(!x$numbers %in% y$numbers), head(s.test, -1), tail(s.test, -1)) –  flodel Mar 23 at 1:37
    
Nice, I did not think of using head/tails, it looks more elegant indeed. But I was still hoping there was a dplyr or data.table solution, for my real dataset is really big, so speed would help (though I am not sure they would really be faster, I would have to test). –  Carlos Cinelli Mar 23 at 1:42
    
How many unique values do you have in column letters in your actual data? And how big is really big? –  Arun Mar 23 at 1:54
    
Right now I have around 200 groups and 5000 observations per group. But this is an ongoing analysis, the data gets bigger every day. –  Carlos Cinelli Mar 23 at 1:56

2 Answers 2

up vote 4 down vote accepted

The bottleneck seems to be in split. When simulated on 200 groups and 150,000 observations each, split takes 50 seconds out of the total 54 seconds.

The split step can be made drastically faster using data.table as follows.

## test is a data.table here
s.test <- test[, list(list(.SD)), by=letters]$V1

Here's a benchmark on data of your dimensions using data.table + mapply:

## generate data
set.seed(1L)
k = 200L
n = 150000L
test <- data.frame(letters=sample(paste0("id", 1:k), n*k, TRUE), 
                 numbers=sample(1e6, n*k, TRUE), stringsAsFactors=FALSE)

require(data.table)   ## latest CRAN version is v1.9.2
setDT(test)           ## convert to data.table by reference (no copy)
system.time({
    s.test <- test[, list(list(.SD)), by=letters]$V1 ## split
    setattr(s.test, 'names', unique(test$letters))   ## setnames
    notIn <- mapply(function(x,y) 
         sum(!s.test[[x]]$numbers %in% s.test[[y]]$numbers), 
              x=names(s.test)[1:199], y=names(s.test)[2:200])
})

##   user  system elapsed 
##  4.840   1.643   6.624 

That's about ~7.5x speedup on your biggest data dimensions. Would this be sufficient?

share|improve this answer
    
My first thought was that given what they want to do with the data, it might make more sense to store it in wide format, rather than long, or even just a plain list, since then you're just avoiding the splitting altogether, data.table or no. If they stored it that way up front, I wonder how fast a simple loop through the columns would be. –  joran Mar 23 at 3:19
    
Yeap, +1, I tested on the real data.frame and this speed up was really substantial! @joran today the data is already collected in that form, maybe tranforming it to wide format could be helpful, but I am not sure (because I would have to do this a lot of times), I will give it a shot though. –  Carlos Cinelli Mar 23 at 3:58
    
Couldn't you also tackle this with a cross join? –  hadley Mar 23 at 22:19
    
@hadley, I don't see an obvious way. How do you mean to do it? –  Arun Mar 23 at 22:31
    
@arun my intuition is that you could do a self cross join, drop the cases where the rows are the same on both sides, and then setdiff the variables. –  hadley Mar 23 at 22:51

This seems to give about the same speedup as with data.table but only uses base R. Instead of splitting the data frame it splits the numbers column only (in line marked ##):

## generate data - from Arun's post
set.seed(1L)
k = 200L
n = 150000L
test <- data.frame(letters=sample(paste0("id", 1:k), n*k, TRUE), 
                 numbers=sample(1e6, n*k, TRUE), stringsAsFactors=FALSE)

system.time({
    s.numbers <- with(test, split(numbers, letters)) ##
    notIn <- mapply(function(x,y) 
         sum(!s.numbers[[x]] %in% s.numbers[[y]]), 
              x=names(s.numbers)[1:199], y=names(s.numbers)[2:200])
})
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