Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am working with a dataframe that looks like this:

date<-c("2012-02-01", "2012-02-01", "2012-02-03", "2012-02-04", "2012-02-04", "2012-02-05", "2012-02-09", "2012-02-12", "2012-02-12")

I would like to create a second dataframe that will tabulate the number of observations I have each day. In that dataframe, the dates that are not mentioned would get a zero...resulting in something like this:


I have tried a number of things with the aggregate function, but can't figure out how to include the dates with no observations (the zeros).

share|improve this question
+1 for a reproducible example! –  mnel Oct 30 '12 at 2:46

2 Answers 2

up vote 2 down vote accepted

Here an approach using data.table

DF1 <- as.data.table(df1)
# coerce date to a date object
DF1[, date := as.IDate(as.character(date), format = '%Y-%m-%d')]
# setkey for joining
setkey(DF1, date)

# create a data.table that matches with a data.table containing
# a sequence from the minimum date to the maximum date
# nomatch = NA includes those non-matching. 
# .N is the number of rows in the subset data.frame
# this is 0 when there are no matches 
DF2 <- DF1[J(DF1[,seq(min(date), max(date), by = 1)]), .N, nomatch = NA]

          date N
 1: 2012-02-01 2
 2: 2012-02-02 0
 3: 2012-02-03 1
 4: 2012-02-04 2
 5: 2012-02-05 1
 6: 2012-02-06 0
 7: 2012-02-07 0
 8: 2012-02-08 0
 9: 2012-02-09 1
10: 2012-02-10 0
11: 2012-02-11 0
12: 2012-02-12 2

An approach using reshape2::dcast

If you ensure that your date column has levels for every day that you wish to tabulate

df1$date <- with(df1, factor(date, levels = as.character(seq(min(as.Date(as.character(date))), max(as.Date(as.character(date))), by = 1 ))))

df2 <- dcast(df1, date~., drop = FALSE)
share|improve this answer
+1 Nice answer. But why 'by=1'? –  Matt Dowle Oct 30 '12 at 8:02
It is part of the call to seq. –  mnel Oct 30 '12 at 8:11
Oops, bleary eyes this morning ;) –  Matt Dowle Oct 30 '12 at 9:25

I recently dealt with something like this. I would create a data frame with all of the dates you want to consider and use the merge() function to do what you are suggesting.

df1$date <- as.Date(df1$date, format = "%Y-%m-%d")
newdates <- data.frame(date=seq(as.Date('2012-02-01'),as.Date('2012-02-12'),1))
df2 <- merge(df1, newdates, by = "date", all = TRUE)

The all = TRUE is crucial here, it introduces NAs where df1 and df2 don't match up instead of deleting these instances.

Then use the plyr package to get counts:

ddply(df2, "date", function(x) sum(!is.na(x$var)))

This splits df2 into groups by unique values of df2$date, then finds how many values of df2$var were not NA, then returns that number along with the unique value of df2$date it represents.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.