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Suppose I have a vector and I don't know, apriori, its unique elements (here: 1 and 2).

vec <-
  c(1, 1, 1, 2, 2, 2, 2)

I was interested in knowing is there a better way (or elegant way) of getting the number of unique elements in vec i.e. the same result as table(vec). It doesn't matter if its a data.frame or a named vector.

R> table(vec)
vec
1 2 
3 4 

Reason: I was curious to know if there is a better way. Also, I noticed that there is a for loop in the base implementation (in addition to .C call). I don't know if it's a big concern, but when I do something like

R> table(rep(1:1000,100000))

R takes really long time. I am sure it's because of the huge number 100000. But is there a way of making it faster?

EDIT This also does a good job in addition to Chase's answer.

R> rle(sort(sampData))
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1 Answer 1

up vote 9 down vote accepted

This is an interesting problem - I'm curious to see other thoughts on this. Looking at the source for table() reveals that it builds off of tabulate(). tabulate() has a few quirks apparently, namely that it only deals with positive integers and returns an integer vector without names. We can use unique() on our vector to apply the names(). If you need to tabulate zero or negative values, I guess going back and reviewing table() would be necessary as tabulate() doesn't seem to do that per the examples on the help page.

table2 <- function(data) {
    x <- tabulate(data)
    y <- sort(unique(data))
    names(x) <- y
    return(x)   
    }

And a quick test:

> set.seed(42)
> sampData <- sample(1:5, 10000000, TRUE, prob = c(.3,.25, .2, .15, .1))
> 
> system.time(table(sampData))
   user  system elapsed 
  4.869   0.669   5.503 
> system.time(table2(sampData))
 user  system elapsed 
0.410   0.200   0.605
> 
> table(sampData)
sampData
      1       2       3       4       5 
2999200 2500232 1998652 1500396 1001520 
> table2(sampData)
      1       2       3       4       5 
2999200 2500232 1998652 1500396 1001520 

EDIT: I just realized there is a count() function in plyr which is another alternative to table(). In the test above, it performs better than table(), and slightly worse than the hack-job solution I put together:

library(plyr)
 system.time(count(sampData))
   user  system elapsed 
  1.620   0.870   2.483
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thanks good solution. Actually, I was also thinking along the same lines. I was curious if there is a solution using lapply or (for my liking) using plyr's functions (summarize,etc). (I know lapply won't necessarily improve the speed) –  suncoolsu Dec 20 '10 at 4:06
2  
@suncoolsu - Have you seen count() from plyr? I wasn't aware of it previously, but your comment turned me down a path to finding it. Could be another viable alternative for you. –  Chase Dec 20 '10 at 4:17
2  
Well, sort inside unique is redundant; removing it gives me 3x speedup of table2 on this data. –  mbq Dec 20 '10 at 12:49
    
@mbq - you are right, we can sort outside unique. We do need sort though as unique would return 5 1 4 3 2 for this data so would not give the right results without sorting them...though it's obviously much cheaper to sort 5 values vis a vis 1M values. Nice catch. –  Chase Dec 20 '10 at 13:10
    
good point that it is indeed required for integers; for factors, you just have to copy levels to the output of tabulate. –  mbq Dec 20 '10 at 13:18

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