# Is there a better way of obtaining the same output as table(vec) where vec is a vector?

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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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
``````
-
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
@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
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