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I am using R and I have a data frame containing info about the applications made by individuals for a grant. Individuals can apply for a grant as many times as they like. I want to derive a new variable that tells me how many applications each individual has made up to and including the date of the application represented by each record.

At the moment my data looks like this:

app number  date app made     applicant
1           2012-08-01        John
2           2012-08-02        John
3           2012-08-02        Jane
4           2012-08-04        John
5           2012-08-08        Alice
6           2012-08-09        Alice
7           2012-08-09        Jane

And I would like to add a further variable so my data frame looks like this:

app number  date app made    applicant  applications by applicant to date
1           2012-08-01       John       1
2           2012-08-02       John       2
3           2012-08-02       Jane       1
4           2012-08-04       John       3
5           2012-08-08       Alice      1
6           2012-08-09       Alice      2
7           2012-08-09       Jane       2

I'm new to R and I'm really struggling to work out how to do this. The closest I am able to get is something like the answer in this question: How do I count the number of observations at given intervals in R?

But I can't work out how to do this based on the date in each record rather than on pre-set intervals.

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3 Answers 3

Here's a less elegant way than @Justin 's:

    A <- read.table(text='"app number"  "date app made"     "applicant"
    1           2012-08-01        John
    2           2012-08-02        John
    3           2012-08-02        Jane
    4           2012-08-04        John
    5           2012-08-08        Alice
    6           2012-08-09        Alice
    7           2012-08-09        Jane',header=TRUE)

    # order by applicant name
    A <- A[order(A$applicant), ]
    # get vector you're looking for
    A$app2date <- unlist(sapply(unique(A$applicant),function(x, appl){
                         seq(sum(A$applicant == x))
                       }, appl = A$applicant)
                     )
    # back in original order:
    A   <- A[order(A$"app.number"), ]
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2  
+1 because it looks exactly like the requested output, and because it doesn't require any extra packages. –  GSee Aug 14 '12 at 17:19

You can use plyr for this. If your data is in a data.frame dat, I would add a column called count, then use cumsum

library(plyr)
dat <- structure(list(number = 1:7, date = c("2012-08-01", "2012-08-02", 
"2012-08-02", "2012-08-04", "2012-08-08", "2012-08-09", "2012-08-09"
), name = c("John", "John", "Jane", "John", "Alice", "Alice", 
"Jane")), .Names = c("number", "date", "name"), row.names = c(NA, 
-7L), class = "data.frame")

dat$count <- 1

ddply(dat, .(name), transform, count=cumsum(count))

  number       date  name count
1      5 2012-08-08 Alice     1
2      6 2012-08-09 Alice     2
3      3 2012-08-02  Jane     1
4      7 2012-08-09  Jane     2
5      1 2012-08-01  John     1
6      2 2012-08-02  John     2
7      4 2012-08-04  John     3
> 

I assumed your dates were already sorted, however you might want to explicitly sort them anyway before you do your "counting":

dat <- dat[order(dat$date),]

as per the comment, this can be simplified if you understand (which I didn't!) the way transform is working:

ddply(dat, .(name), transform, count=order(date))
  number       date  name count
1      5 2012-08-08 Alice     1
2      6 2012-08-09 Alice     2
3      3 2012-08-02  Jane     1
4      7 2012-08-09  Jane     2
5      1 2012-08-01  John     1
6      2 2012-08-02  John     2
7      4 2012-08-04  John     3
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2  
perhaps it can be done a bit simpler by using order() as the column, e.g. ddply(foo,.(name),transform,count=order(date). Then you don't need to add the column first, nor sort separately. –  frankc Aug 14 '12 at 17:10
    
well whatdya know. I didn't expect there to be an implicit "counting" of rows from transform! Edited appropriately. –  Justin Aug 14 '12 at 17:15

Here is a 1 line approach using the ave function. This version does not require reordering the data, but leaves the data in the same order as it was originally:

A$applications <- ave(A$app.number, A$applicant, FUN=seq_along)
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I like this, thanks –  tim riffe Aug 14 '12 at 18:58
    
Thanks Greg, I think this is the way forward, although I'll work my way through them all to try and understand them. –  Madeleine Thornton Aug 15 '12 at 8:28

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