# Fastest way to count occurrences of each unique element

What is the fastest way to compute the number of occurrences for each unique element in a vector in R?

So far, I've tried the following five functions:

``````f1 <- function(x)
{
aggregate(x, by=list(x), FUN=length)
}

f2 <- function(x)
{
r <- rle(x)
aggregate(r\$lengths, by=list(r\$values), FUN=sum)
}

f3 <- function(x)
{
u <- unique(x)
data.frame(Group=u, Counts=vapply(u, function(y)sum(x==y), numeric(1)))
}

f4 <- function(x)
{
r <- rle(x)
u <- unique(r\$values)
data.frame(Group=u, Counts=vapply(u, function(y)sum(r\$lengths[r\$values==y]), numeric(1)))
}

f5 <- function(x)
{
as.data.frame(unclass(rle(sort(x))))[,2:1]
}
``````

Some of them do not give the result sorted by category, but that is not important. Here are the results(used package `microbenchmark`):

``````> x <- sample(1:100, size=1e3, TRUE); microbenchmark(f1(x), f2(x), f3(x), f4(x), f5(x))
Unit: microseconds
expr      min        lq    median        uq      max neval
f1(x) 4133.353 4230.3700 4272.5985 4394.1895 7038.420   100
f2(x) 4464.268 4549.8180 4615.3465 4728.1995 7457.435   100
f3(x) 1032.064 1063.0080 1091.7670 1135.4525 3824.279   100
f4(x) 4748.950 4801.3725 4861.2575 4947.3535 7831.308   100
f5(x)  605.769  696.9615  714.9815  729.5435 3411.817   100
>
> x <- sample(1:100, size=1e4, TRUE); microbenchmark(f1(x), f2(x), f3(x), f4(x), f5(x))
Unit: milliseconds
expr       min        lq    median        uq       max neval
f1(x) 25.057491 25.739892 25.937021 26.321998 27.875918   100
f2(x) 27.223552 27.718469 28.023355 28.537022 30.584403   100
f3(x)  5.361635  5.458289  5.537650  5.657967  8.261243   100
f4(x) 35.341726 35.841922 36.299161 38.012715 70.096613   100
f5(x)  2.158415  2.248881  2.281826  2.384304  4.793000   100
>
> x <- sample(1:100, size=1e5, TRUE); microbenchmark(f1(x), f2(x), f3(x), f4(x), f5(x), times=10)
Unit: milliseconds
expr       min        lq    median        uq       max neval
f1(x) 236.53630 240.93358 242.88631 244.33994 250.75403    10
f2(x) 261.03280 263.61096 264.67032 265.81852 297.92244    10
f3(x)  53.94873  55.59020  59.05662  61.05741  87.23288    10
f4(x) 385.10217 390.44888 396.40572 399.23762 432.47262    10
f5(x)  18.31358  18.53492  18.84327  20.22700  20.34385    10
>
> x <- sample(1:100, size=1e6, TRUE); microbenchmark(f1(x), f2(x), f3(x), f4(x), f5(x), times=3)
Unit: milliseconds
expr       min        lq    median        uq       max neval
f1(x) 2559.0462 2568.7480 2578.4498 2693.3116 2808.1734     3
f2(x) 2833.2622 2881.9241 2930.5860 2946.7877 2962.9895     3
f3(x)  743.6939  748.3331  752.9723  778.9532  804.9341     3
f4(x) 4471.8494 4544.6490 4617.4487 4696.2698 4775.0909     3
f5(x)  243.8903  253.2481  262.6058  269.1038  275.6018     3
>
> x <- sample(1:1000, size=1e6, TRUE); microbenchmark(f1(x), f2(x), f3(x), f4(x), f5(x), times=3)
Unit: milliseconds
expr        min         lq     median         uq        max neval
f1(x)  2614.7104  2634.9312  2655.1520  2701.6216  2748.0912     3
f2(x)  3038.0353  3116.7499  3195.4645  3197.7423  3200.0202     3
f3(x)  6488.7268  6508.6495  6528.5722  6836.9738  7145.3754     3
f4(x) 40244.5038 40653.2633 41062.0229 41200.1973 41338.3717     3
f5(x)   244.2052   245.0331   245.8609   273.3307   300.8006     3
> x <- sample(1:10000, size=1e6, TRUE); microbenchmark(f1(x), f2(x), f3(x), f4(x), f5(x), times=3)  # SLOW!
Unit: milliseconds
expr         min          lq      median          uq         max neval
f1(x)   3279.2146   3300.7527   3322.2908   3338.6000   3354.9091     3
f2(x)   3563.5244   3578.3302   3593.1360   3597.2246   3601.3132     3
f3(x)  61303.6299  61928.4064  62553.1830  63089.5225  63625.8621     3
f4(x) 398792.7769 400346.2250 401899.6732 490921.6791 579943.6850     3
f5(x)    261.1835    263.7766    266.3697    287.3595    308.3494     3
``````

(The last comparison is really slow, takes a couple minutes to run).

Apparently, the winner is `f5`, but I'd like to see if it can be outperformed...

EDIT: Considering suggestions `f6` by @eddi, `f8` by @AdamHyland (modified) and `f9` by @dickoa, here are the new results:

``````f6 <- function(x)
{
data.table(x)[, .N, keyby = x]
}

f8 <- function(x)
{
fac <- factor(x)

data.frame(x = levels(fac), freq = tabulate(as.integer(fac)))
}

f9 <- plyr::count
``````

Results:

``````> x <- sample(1:1e4, size=1e6, TRUE); microbenchmark(f5(x), f6(x), f8(x), f9(x), times=10)
Unit: milliseconds
expr      min        lq   median        uq      max neval
f5(x) 291.8189 292.69771 293.2349 293.91216 296.3622    10
f6(x)  96.5717  96.73662  96.8249  99.25542 150.1081    10
f8(x) 659.3281 663.85092 669.6831 672.43613 699.4790    10
f9(x) 284.2978 296.41822 301.3535 331.92510 346.5567    10
> x <- sample(1:1e3, size=1e7, TRUE); microbenchmark(f5(x), f6(x), f8(x), f9(x), times=10)
Unit: milliseconds
expr       min        lq   median       uq      max neval
f5(x) 3190.2555 3224.4201 3264.415 3359.823 3464.782    10
f6(x)  980.1287  989.9998 1051.559 1056.484 1085.580    10
f8(x) 5092.5847 5142.3289 5167.101 5244.400 5348.513    10
f9(x) 2799.6125 2843.1189 2881.734 2977.116 3081.437    10
``````

So `data.table` is the winner! - so far :-)

p.s. I had to modify `f6` to allow inputs like `c(5,2,2,10)`, where not all integer from `1` to `max(x)` are present.

-
Maybe I'm missing something obvious, but are you just trying to accomplish what `table` does? –  joran Jun 20 '13 at 20:37
@joran, `table` is slower than `f5`, I've just tried. –  Ferdinand.kraft Jun 20 '13 at 20:55
btw `microbenchmark` does not make so sense if used for just 3 runs. –  Michele Jun 20 '13 at 20:57
@Michele, why not? I've used 3 runs because it's really slow. Should I use `system.time` instead? –  Ferdinand.kraft Jun 20 '13 at 20:59
Also, don't get too excited about `f5`, it doesn't run at all on factors! (Which may not be a requirement for you, but it's important to remember that constructing speedy versions of things like this will break lots of other things you might have expected to work...) –  joran Jun 20 '13 at 21:03

This is a little slower than `tabulate`, but is more universal (it will work with characters, factors, basically whatever you throw at it) and much easier to read/maintain/expand.

``````library(data.table)

f6 = function(x) {
data.table(x)[, .N, keyby = x]
}

x <- sample(1:1000, size=1e7, TRUE)
system.time(f6(x))
#   user  system elapsed
#   0.80    0.07    0.86

system.time(f8(x)) # tabulate + dickoa's conversion to data.frame
#   user  system elapsed
#   0.56    0.04    0.60
``````
-
On 1e7 vector, it takes 0.97 seconds. It's hard to beat operations on vector/matrix with `data.table`. –  Arun Jun 20 '13 at 20:57
and it will be even faster if you use a plain `by`, not `keyby` –  mnel Jun 21 '13 at 1:11
yep, I was trying to match `f1` –  eddi Jun 21 '13 at 3:38
`data.table` for some reason counts `Inf` (and `-Inf` to be different from another `Inf` (or `-Inf`). That is, if you have `y <- data.table(a=c(Inf, Inf, -Inf, -Inf))` then, `y[, .N, by=a]` will give you all 1's. `table` does this correctly. –  Arun Jun 21 '13 at 5:11
@eddi, indeed. filed here just now –  Arun Jun 21 '13 at 17:46
show 1 more comment

There's almost nothing that will beat `tabulate()` provided you can meet the initial conditions.

``````x <- sample(1:100, size=1e7, TRUE)
system.time(tabulate(x))
#  user  system elapsed
# 0.071   0.000   0.072
``````

@dickoa adds a few more notes in the comments as to how to get the appropriate output, but tabulate as a workhorse function is the way to go.

-
+1, you can always add `min(x)+1` if `min(x) <= 0`. –  Arun Jun 20 '13 at 20:56
I've never used `tabulate` before, so maybe I'm missing smth, but the output of this is different from any of the functions in OP, so I don't think this is a fair comparison (at this point) –  eddi Jun 20 '13 at 20:57
Still you can do something like : `f8 <- function(x) data.frame(x = sort(unique(x)), freq = tabulate(x))1` and is a way faster than any given solutions. Plus we have `all.equal(f5(x), f8(x), check.attributes = FALSE)` equal to `TRUE` –  dickoa Jun 20 '13 at 20:59
@eddi `tabulate` doesn't filter the results down to only those integers that occur in the vector, that's all, I think. –  joran Jun 20 '13 at 20:59
@joran, + it only considers numbers from 1 to N (N = max(x)). –  Arun Jun 20 '13 at 21:00