# How to generate a frequency table in R with with cumulative frequency and relative frequency

I'm new with R. I need to generate a simple Frequency Table (as in books) with cumulative frequency and relative frequency.

So I want to generate from some simple data like

``````> x
[1] 17 17 17 17 17 17 17 17 16 16 16 16 16 18 18 18 10 12 17 17 17 17 17 17 17 17 16 16 16 16 16 18 18 18 10
[36] 12 15 19 20 22 20 19 19 19
``````

a table like:

``````            frequency  cumulative   relative
(9.99,11.7]    2            2       0.04545455
(11.7,13.4]    2            4       0.04545455
(13.4,15.1]    1            5       0.02272727
(15.1,16.9]   10           15       0.22727273
(16.9,18.6]   22           37       0.50000000
(18.6,20.3]    6           43       0.13636364
(20.3,22]      1           44       0.02272727
``````

I know it should be simple, but I don't know how.

I got some results using this code:

``````factorx <- factor(cut(x, breaks=nclass.Sturges(x)))
as.matrix(table(factorx))
``````

You're close! There are a few functions that will make this easy for you, namely `cumsum()` and `prop.table()`. Here's how I'd probably put this together. I make some random data, but the point is the same:

``````#Fake data
x <- sample(10:20, 44, TRUE)
factorx <- factor(cut(x, breaks=nclass.Sturges(x)))
#Tabulate and turn into data.frame
xout <- as.data.frame(table(factorx))
xout <- transform(xout, cumFreq = cumsum(Freq), relative = prop.table(Freq))
#-----
factorx Freq cumFreq   relative
1 (9.99,11.4]   11      11 0.25000000
2 (11.4,12.9]    3      14 0.06818182
3 (12.9,14.3]   11      25 0.25000000
4 (14.3,15.7]    2      27 0.04545455
5 (15.7,17.1]    6      33 0.13636364
6 (17.1,18.6]    3      36 0.06818182
7   (18.6,20]    8      44 0.18181818
``````
• also should give a plug to `??` function which allows for fuzzy searching, i.e `??"cumulative sum"` would lead you in the right direction. Jun 22, 2012 at 1:13
• It worked nice, it was confusing me that the display of the data is done as a data frame (instead of a table). The `??` is realy good but I'm not native English speaker so is difficult to search help. Jun 22, 2012 at 13:19
• @El_Hoy - compare the output of `str(as.data.frame(table(sample(1:10, 100, TRUE))))` and `str(table(sample(1:10, 100, TRUE)))` to see the difference in the output. Formatting as a data.frame just makes it easier to add the cumsum and proportions. Good luck! Lots of good info here on SO and plenty of people who like answering questions. Cheers! Jun 22, 2012 at 14:39

The base functions `table`, `cumsum` and `prop.table` should get you there:

`````` cbind( Freq=table(x), Cumul=cumsum(table(x)), relative=prop.table(table(x)))
Freq Cumul   relative
10    2     2 0.04545455
12    2     4 0.04545455
15    1     5 0.02272727
16   10    15 0.22727273
17   16    31 0.36363636
18    6    37 0.13636364
19    4    41 0.09090909
20    2    43 0.04545455
22    1    44 0.02272727
``````

With cbind and naming of the columns to your liking this should be pretty easy for you in the future. The output from the table function is a matrix, so this result is also a matrix. If this were being done on something big it would be more efficient todo this:

``````tbl <- table(x)
cbind( Freq=tbl, Cumul=cumsum(tbl), relative=prop.table(tbl))
``````

If you are looking for something pre-packaged, consider the `freq()` function from the `descr` package.

``````library(descr)
x = c(sample(10:20, 44, TRUE))
freq(x, plot = FALSE)
``````

Or to get cumulative percents, use the `ordered()` function

``````freq(ordered(x), plot = FALSE)
``````

To add a "cumulative frequencies" column:

``````tab = as.data.frame(freq(ordered(x), plot = FALSE))
CumFreq = cumsum(tab[-dim(tab)[1],]\$Frequency)
tab\$CumFreq = c(CumFreq, NA)
tab
``````

If your data has missing values, a valid percent column is added to the table.

``````x = c(sample(10:20, 44, TRUE), NA, NA)
freq(ordered(x), plot = FALSE)
``````

Yet another possibility:

`````` library(SciencesPo)
x = c(sample(10:20, 50, TRUE))
freq(x)
``````

My suggestion is to check the agricolae package... check it out:

``````library(agricolae)

weight<-c( 68, 53, 69.5, 55, 71, 63, 76.5, 65.5, 69, 75, 76, 57, 70.5,
+ 71.5, 56, 81.5, 69, 59, 67.5, 61, 68, 59.5, 56.5, 73,
+ 61, 72.5, 71.5, 59.5, 74.5, 63)

h1<- graph.freq(weight,col="yellow",frequency=1,las=2,xlab="h1")

print(summary(h1),row.names=FALSE)
``````