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 new in R programming language. I have a data set that has 2 columns(ID and Num) like this:

ID    Num
3       8
3      12
4      15
4      18
4      24

But I want to convert it to:

ID    Num
3     8 12
4     15 18 24

3 and 4 are still in column 'ID' but 8 and 12 are in one row near each other, in 'Num' column with 'ID' of 3. And also 4 is in column 'ID' and 15 18 and 24 are in one row near each other, in 'Num' column with ID of 4. Can anyone help me convert original data set to this new type. I searched a lot but I couldn't find R code of this problem anywhere.

share|improve this question
    
Since you are new to R I would like to point out that besides for printing your intended output will not be very useful. –  Roland Jun 8 '13 at 10:35

3 Answers 3

up vote 3 down vote accepted

You can also use aggregate

> aggregate(DF$Num~DF$ID, FUN=paste, sep=" ")
  DF$ID     DF$Num
1     3      8, 12
2     4 15, 18, 24

Alternatively, you can use data = parameter of aggregate to get the column names not have the DF$:

aggregate(data=DF, Num~ID, FUN=paste, sep=" ")
#   ID        Num
# 1  3      8, 12
# 2  4 15, 18, 24
share|improve this answer

The problem with the data format you want to get is that it requires a varying number of columns. Of course, if you have at most three values for each id, you could just add three columns. But that will get rather complicated and hard to handle for ids with say 100 values.

On way around is to use lists. Here, The number of columns is not fixed anymore.

The way to archive what you want with lists is not difficult:

d <- data.frame(id=c(3,3,4,4,4), num=c(8,12,15,18,24))  # Just your sample data
l <- with(d, tapply(num, id, c))

What happens above? with just spares me the need for typing d$num and d$id and does nothing for the actual solution. The key lies in tapply. Here, we group all values of num by id and call c separately for those groups. tapply then collects the outputs and returns a datastructure that fits the resulting values best - in our case that is a list. The result:

> l
$`3`
[1]  8 12

$`4`
[1] 15 18 24

You can query only parts using

> l[[1]]      # The first element in the list
[1]  8 12
> l[['3']]    # The element with key (id) `3`
[1]  8 12

One more way. If you rather want the numbers pasted together as a string in a single column this of course is possible as well:

> with(d, tapply(num, id, paste, collapse=' '))
         3          4 
    "8 12" "15 18 24" 
share|improve this answer

Alternatively if you want the Num column to be a list, you can do something this:

using by:

do.call(rbind, by(df, df$ID, FUN=function(x) 
             data.frame(ID=x$ID[1], Num = I(list(x$Num)))))

#   ID        Num
# 3  3      8, 12
# 4  4 15, 18, 24

Or using split + lapply:

do.call(rbind, lapply(split(df, df$ID), function(x) 
               data.frame(ID=x$ID[1], Num=I(list(x$Num)))))

Or using plyr package:

require(plyr)
ddply(df, .(ID), function(x) data.frame(ID = x$ID[1], Num = I(list(x$Num))))

Or using data.table package:

require(data.table)
dt <- as.data.table(df)
dt[, list(Num = list(Num)),by = ID]
share|improve this answer

Your Answer

 
discard

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.