I have a big dataframe with columns such as:

ID, time, OS, IP

Each row of that dataframe corresponds to one entry. Within that dataframe for some IDs several entries (rows) exist. I would like to get rid of those multiple rows (obviously the other attributes will differ for the same ID). Or put different: I only want one single entry (row) for each ID.

When I use unique on the ID column, I only receive the levels (or each unique ID), but I want to keep the other attributes as well. I have tried to use apply(x,2,unique(data$ID)), but this does not work either.

  • 1
    You have to define what do you want to do with the other attributes for observations with the same ID when the don't agree. – Aniko May 3 '10 at 16:07
  • well, i would like to see the OS distribution of the users... So when I have the dataframe with only one entry per user, Id do: mytable <- table(dataset$os.name) and do some plotting afterwards... – CatholicEvangelist May 3 '10 at 16:11

Should do the trick

  • This will work if you don't have any heuristic in mind for how to select the other data. Seems like a very strange use case to me... – Shane May 3 '10 at 16:27

If you want to keep one row for each ID, but there is different data on each row, then you need to decide on some logic to discard the additional rows. For instance:

df <- data.frame(ID=c(1, 2, 2, 3), time=1:4, OS="Linux")
  ID time    OS
1  1    1 Linux
2  2    2 Linux
3  2    3 Linux
4  3    4 Linux

Now I will keep the maximum time value and the last OS value:

unique(ddply(df, .(ID), function(x) data.frame(ID=x[,"ID"], time=max(x$time), OS=tail(x$OS,1))))
  ID time    OS
1  1    1 Linux
2  2    3 Linux
4  3    4 Linux

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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