# Count number of occurences for each unique value

Let's say I have:

``````v = rep(c(1,2, 2, 2), 25)
``````

Now, I want to count the number of times each unique value appears. `unique(v)` returns what the unique values are, but not how many they are.

``````> unique(v)
[1] 1 2
``````

I want something that gives me

``````length(v[v==1])
[1] 25
length(v[v==2])
[1] 75
``````

but as a more general one-liner :) Something close (but not quite) like this:

``````#<doesn't work right> length(v[v==unique(v)])
``````

Perhaps table is what you are after?

``````dummyData = rep(c(1,2, 2, 2), 25)

table(dummyData)
# dummyData
#  1  2
# 25 75

## or another presentation of the same data
as.data.frame(table(dummyData))
#    dummyData Freq
#  1         1   25
#  2         2   75
``````
• Ah, yes, I can use this, with some slight modification: t(as.data.frame(table(v))[,2]) is exactly what I need, thank you Commented Nov 18, 2010 at 13:30
• I used to do this awkwardly with `hist`. `table` seems quite a bit slower than `hist`. I wonder why. Can anyone confirm? Commented Aug 22, 2013 at 23:03
• Chase, any chance to order by frequency? I have the exact same problem, but my table has roughly 20000 entries and I'd like to know how frequent the most common entries are. Commented Dec 1, 2014 at 16:25
• @Torvon - sure, just use `order()` on the results. i.e. `x <- as.data.frame(table(dummyData)); x[order(x\$Freq, decreasing = TRUE), ]` Commented Dec 2, 2014 at 20:22
• This method is not good, it is only fit for very few data with a lot of repeated, it will not fit a lot of continous data with few duplicated records. Commented Oct 10, 2017 at 11:31

If you have multiple factors (= a multi-dimensional data frame), you can use the `dplyr` package to count unique values in each combination of factors:

``````library("dplyr")
data %>% group_by(factor1, factor2) %>% summarize(count=n())
``````

It uses the pipe operator `%>%` to chain method calls on the data frame `data`.

• Alternatively, and a bit shorter: `data %>% count(factor1, factor2)` Commented Sep 25, 2020 at 11:44

It is a one-line approach by using `aggregate`.

``````> aggregate(data.frame(count = v), list(value = v), length)

value count
1     1    25
2     2    75
``````
• One-liner indeed instead of using unique() + something else. Wonderful! Commented Mar 5, 2021 at 9:07
• NB: This doesn't include the NA values Commented Feb 9, 2022 at 11:55
• aggregate is underappreciated! Commented May 12, 2022 at 8:57

`length(unique(df\$col))` is the most simple way I can see.

• R has probably evolved a lot in the last 10 years, since I asked this question. Commented Jul 22, 2020 at 10:51
• doesn't answer the question - requested is per group count Commented Jun 20 at 4:48

table() function is a good way to go, as Chase suggested. If you are analyzing a large dataset, an alternative way is to use .N function in datatable package.

Make sure you installed the data table package by

``````install.packages("data.table")
``````

Code:

``````# Import the data.table package
library(data.table)

# Generate a data table object, which draws a number 10^7 times
# from 1 to 10 with replacement
DT<-data.table(x=sample(1:10,1E7,TRUE))

# Count Frequency of each factor level
DT[,.N,by=x]
``````

To get an un-dimensioned integer vector that contains the count of unique values, use `c()`.

``````dummyData = rep(c(1, 2, 2, 2), 25) # Chase's reproducible data
c(table(dummyData)) # get un-dimensioned integer vector
1  2
25 75

str(c(table(dummyData)) ) # confirm structure
Named int [1:2] 25 75
- attr(*, "names")= chr [1:2] "1" "2"
``````

This may be useful if you need to feed the counts of unique values into another function, and is shorter and more idiomatic than the `t(as.data.frame(table(dummyData))[,2]` posted in a comment to Chase's answer. Thanks to Ricardo Saporta who pointed this out to me here.

This works for me. Take your vector `v`

`length(summary(as.factor(v),maxsum=50000))`

Comment: set maxsum to be large enough to capture the number of unique values

or with the `magrittr` package

`v %>% as.factor %>% summary(maxsum=50000) %>% length`

Also making the values categorical and calling `summary()` would work.

``````> v = rep(as.factor(c(1,2, 2, 2)), 25)
> summary(v)
1  2
25 75
``````

You can try also a `tidyverse`

``````library(tidyverse)
dummyData %>%
as.tibble() %>%
count(value)
# A tibble: 2 x 2
value     n
<dbl> <int>
1     1    25
2     2    75
``````

If you need to have the number of unique values as an additional column in the data frame containing your values (a column which may represent sample size for example), plyr provides a neat way:

``````data_frame <- data.frame(v = rep(c(1,2, 2, 2), 25))

library("plyr")
data_frame <- ddply(data_frame, .(v), transform, n = length(v))
``````
• or `ddply(data_frame, .(v), count)`. Also worth making it explicit that you need a `library("plyr")` call to make `ddply` work. Commented May 8, 2013 at 21:45
• Seems strange to use `transform` instead of `mutate` when using `plyr`. Commented Sep 26, 2015 at 0:38

I know there are many other answers, but here is another way to do it using the `sort` and `rle` functions. The function `rle` stands for Run Length Encoding. It can be used for counts of runs of numbers (see the R man docs on `rle`), but can also be applied here.

``````test.data = rep(c(1, 2, 2, 2), 25)
rle(sort(test.data))
## Run Length Encoding
##   lengths: int [1:2] 25 75
##   values : num [1:2] 1 2
``````

If you capture the result, you can access the lengths and values as follows:

``````## rle returns a list with two items.
result.counts <- rle(sort(test.data))
result.counts\$lengths
## [1] 25 75
result.counts\$values
## [1] 1 2
``````

You can also try `dplyr::count`

``````df <- tibble(x=c('a','b','b','c','c','d'), y=1:6)

dplyr::count(df, x, sort = TRUE)

# A tibble: 4 x 2
x         n
<chr> <int>
1 b         2
2 c         2
3 a         1
4 d         1
``````

If you want to run unique on a data.frame (e.g., train.data), and also get the counts (which can be used as the weight in classifiers), you can do the following:

``````unique.count = function(train.data, all.numeric=FALSE) {
# first convert each row in the data.frame to a string
train.data.str = apply(train.data, 1, function(x) paste(x, collapse=','))
# use table to index and count the strings
train.data.str.t = table(train.data.str)
# get the unique data string from the row.names
train.data.str.uniq = row.names(train.data.str.t)
weight = as.numeric(train.data.str.t)
# convert the unique data string to data.frame
if (all.numeric) {
train.data.uniq = as.data.frame(t(apply(cbind(train.data.str.uniq), 1,
function(x) as.numeric(unlist(strsplit(x, split=","))))))
} else {
train.data.uniq = as.data.frame(t(apply(cbind(train.data.str.uniq), 1,
function(x) unlist(strsplit(x, split=",")))))
}
names(train.data.uniq) = names(train.data)
list(data=train.data.uniq, weight=weight)
}
``````

Throwing in a benchmark on some R native solutions:

``````v <- rep(c("B", "B", "B", "A"), 25)

bench::mark(
rowsum(rep(1, length(v)), v, reorder = FALSE),
tabulate(factor(v, unique(v))),
lengths(split(v, v)),
table(v),
check = FALSE
)

median  mem_alloc
# rowsum(rep(1, length(v)), v, reorder = FALSE)    13.2µs    2.75KB
# tabulate(factor(v, unique(v)))                   16.1µs    2.75KB
# lengths(split(v, v))                             45.5µs    3.62KB
# table(v)                                         84.7µs    6.26KB
``````

The top three of the four have not been proposed here yet.

``````count_unique_words <-function(wlist) {
ucountlist = list()
unamelist = c()
for (i in wlist)
{
if (is.element(i, unamelist))
ucountlist[[i]] <- ucountlist[[i]] +1
else
{
listlen <- length(ucountlist)
ucountlist[[i]] <- 1
unamelist <- c(unamelist, i)
}
}
ucountlist
}

expt_counts <- count_unique_words(population)
for(i in names(expt_counts))
cat(i, expt_counts[[i]], "\n")
``````