105

I have a dataframe and I would like to count the number of rows within each group. I reguarly use the aggregate function to sum data as follows:

df2 <- aggregate(x ~ Year + Month, data = df1, sum)

Now, I would like to count observations but can't seem to find the proper argument for FUN. Intuitively, I thought it would be as follows:

df2 <- aggregate(x ~ Year + Month, data = df1, count)

But, no such luck.

Any ideas?


Some toy data:

set.seed(2)
df1 <- data.frame(x = 1:20,
                  Year = sample(2012:2014, 20, replace = TRUE),
                  Month = sample(month.abb[1:3], 20, replace = TRUE))
  • 17
    nrow, NROW, length... – Joshua Ulrich Mar 21 '12 at 16:54
  • 14
    I keep reading this question as asking for a fun way to count things (as opposed to the many unfun ways, I guess). – Hong Ooi Mar 22 '12 at 6:35
  • 5
    @JoshuaUlrich: nrow did not work for me but NROW and lengthworked fine. +1 – Prolix Aug 11 '15 at 10:19

14 Answers 14

54

Current best practice (tidyverse) is:

require(dplyr)
df1 %>% count(Year, Month)
  • Is there a way to aggregate a variable and do counting too (like 2 functions in aggregation: mean + count)? I need to get the mean of a column and the number of rows for the same value in other column – sop May 15 '15 at 14:06
  • 1
    I'd cbind the results of aggregate(Sepal.Length ~ Species, iris, mean) and aggregate(Sepal.Length ~ Species, iris, length) – geotheory May 16 '15 at 22:28
  • I have done it, but it seems that I get 2 times each column except the one that is aggregated; so I have done a merge on them and it seems to be ok – sop May 18 '15 at 7:20
  • 5
    I don't know but this could be useful as well... df %>% group_by(group, variable) %>% mutate(count = n()) – Manoj Kumar Dec 14 '16 at 17:57
  • 1
    Yes dplyr is best practice now. – geotheory Dec 15 '16 at 2:07
59

Following @Joshua's suggestion, here's one way you might count the number of observations in your df dataframe where Year = 2007 and Month = Nov (assuming they are columns):

nrow(df[,df$YEAR == 2007 & df$Month == "Nov"])

and with aggregate, following @GregSnow:

aggregate(x ~ Year + Month, data = df, FUN = length)
42

dplyr package does this with count/tally commands, or the n() function:

First, some data:

df <- data.frame(x = rep(1:6, rep(c(1, 2, 3), 2)), year = 1993:2004, month = c(1, 1:11))

Now the count:

library(dplyr)
count(df, year, month)
#piping
df %>% count(year, month)

We can also use a slightly longer version with piping and the n() function:

df %>% 
  group_by(year, month) %>%
  summarise(number = n())

or the tally function:

df %>% 
  group_by(year, month) %>%
  tally()
35

An old question without a data.table solution. So here goes...

Using .N

library(data.table)
DT <- data.table(df)
DT[, .N, by = list(year, month)]
  • standard nowadays to use .() instead of list() and setDT() to convert a data.frame to data.table. So in one step setDT(df)[, .N, by = .(year, month)]. – sindri_baldur Sep 27 '19 at 11:33
22

The simple option to use with aggregate is the length function which will give you the length of the vector in the subset. Sometimes a little more robust is to use function(x) sum( !is.na(x) ).

16

An alternative to the aggregate() function in this case would be table() with as.data.frame(), which would also indicate which combinations of Year and Month are associated with zero occurrences

df<-data.frame(x=rep(1:6,rep(c(1,2,3),2)),year=1993:2004,month=c(1,1:11))

myAns<-as.data.frame(table(df[,c("year","month")]))

And without the zero-occurring combinations

myAns[which(myAns$Freq>0),]
16

Create a new variable Count with a value of 1 for each row:

df1["Count"] <-1

Then aggregate dataframe, summing by the Count column:

df2 <- aggregate(df1[c("Count")], by=list(Year=df1$Year, Month=df1$Month), FUN=sum, na.rm=TRUE)
  • Just to note that if you are using the default, non-formula method for aggregate, there is no need to rename each variable in by= like list(year=df1$year) etc. A data.frame is a list already so aggregate(df1[c("Count")], by=df1[c("Year", "Month")], FUN=sum, na.rm=TRUE) will work. – thelatemail Jul 17 '19 at 22:27
7

If you want to include 0 counts for month-years that are missing in the data, you can use a little table magic.

data.frame(with(df1, table(Year, Month)))

For example, the toy data.frame in the question, df1, contains no observations of January 2014.

df1
    x Year Month
1   1 2012   Feb
2   2 2014   Feb
3   3 2013   Mar
4   4 2012   Jan
5   5 2014   Feb
6   6 2014   Feb
7   7 2012   Jan
8   8 2014   Feb
9   9 2013   Mar
10 10 2013   Jan
11 11 2013   Jan
12 12 2012   Jan
13 13 2014   Mar
14 14 2012   Mar
15 15 2013   Feb
16 16 2014   Feb
17 17 2014   Mar
18 18 2012   Jan
19 19 2013   Mar
20 20 2012   Jan

The base R aggregate function does not return an observation for January 2014.

aggregate(x ~ Year + Month, data = df1, FUN = length)
  Year Month x
1 2012   Feb 1
2 2013   Feb 1
3 2014   Feb 5
4 2012   Jan 5
5 2013   Jan 2
6 2012   Mar 1
7 2013   Mar 3
8 2014   Mar 2

If you would like an observation of this month-year with 0 as the count, then the above code will return a data.frame with counts for all month-year combinations:

data.frame(with(df1, table(Year, Month)))
  Year Month Freq
1 2012   Feb    1
2 2013   Feb    1
3 2014   Feb    5
4 2012   Jan    5
5 2013   Jan    2
6 2014   Jan    0
7 2012   Mar    1
8 2013   Mar    3
9 2014   Mar    2
4

For my aggregations I usually end up wanting to see mean and "how big is this group" (a.k.a. length). So this is my handy snippet for those occasions;

agg.mean <- aggregate(columnToMean ~ columnToAggregateOn1*columnToAggregateOn2, yourDataFrame, FUN="mean")
agg.count <- aggregate(columnToMean ~ columnToAggregateOn1*columnToAggregateOn2, yourDataFrame, FUN="length")
aggcount <- agg.count$columnToMean
agg <- cbind(aggcount, agg.mean)
4

A solution using sqldf package:

library(sqldf)
sqldf("SELECT Year, Month, COUNT(*) as Freq
       FROM df1
       GROUP BY Year, Month")
1

Considering @Ben answer, R would throw an error if df1 does not contain x column. But it can be solved elegantly with paste:

aggregate(paste(Year, Month) ~ Year + Month, data = df1, FUN = NROW)

Similarly, it can be generalized if more than two variables are used in grouping:

aggregate(paste(Year, Month, Day) ~ Year + Month + Day, data = df1, FUN = NROW)
0

You can use by functions as by(df1$Year, df1$Month, count) that will produce a list of needed aggregation.

The output will look like,

df1$Month: Feb
     x freq
1 2012    1
2 2013    1
3 2014    5
--------------------------------------------------------------- 
df1$Month: Jan
     x freq
1 2012    5
2 2013    2
--------------------------------------------------------------- 
df1$Month: Mar
     x freq
1 2012    1
2 2013    3
3 2014    2
> 
0

There are plenty of wonderful answers here already, but I wanted to throw in 1 more option for those wanting to add a new column to the original dataset that contains the number of times that row is repeated.

df1$counts <- sapply(X = paste(df1$Year, df1$Month), 
                     FUN = function(x) { sum(paste(df1$Year, df1$Month) == x) })

The same could be accomplished by combining any of the above answers with the merge() function.

0

If your trying the aggregate solutions above and you get the error:

invalid type (list) for variable

Because you're using date or datetime stamps, try using as.character on the variables:

aggregate(x ~ as.character(Year) + Month, data = df, FUN = length)

On one or both of the variables.

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