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 want to add a column to a data frame which will encode the specific levels of a factor. e.g.

subject  rate
1          12
1          10 
1          13
4          4
4          6
4          12
2          9
2          2
2          5
6          17
6          10
6          1

in the above data frame I wish add a third column called "treatment" where subjects are assigned to one of two levels "a" or "b". e.g. below

subject  rate  treatment
1          12      a
1          10      a
1          13      a
4          4       b
4          6       b
4          12      b
2          9       b
2          2       b
2          5       b 
6          17      a
6          10      a
6          1       a  

Thanks in advance for any help.

share|improve this question
Are the assignments at random or follow some specific rules? If the latter, what are the rules? –  Gavin Simpson Jun 13 '11 at 13:25
Hi Gavin, sorry for the delay. The treatment assignment is not at random. I want to be able to specify which subjects are assigned to each treatment. e.g. 1+2 are treatment a and 4+2 are treatment b in the above example. –  Gab_27 Jun 13 '11 at 18:54
You mean 1+6 are treatment "a" and 4 + 2 treatment "b". Anyway, specify a matrix/data.frame like the Treat in my Answer with the mapping you want, then do the merge. You don't need to code before the merge step. I'll update the answer. –  Gavin Simpson Jun 14 '11 at 15:02

3 Answers 3

up vote 5 down vote accepted

Here's another approach using the plyr package:


#Make some fake data
dat <- data.frame(subject = rep(c(1,4,2,6), each = 3), rate = sample(1:20, 12, TRUE))

#Assign treatment based on the subject ID. This does not ensure that you will get
#at least one subject in each treatment group.
ddply(dat, "subject", transform, treatment = sample(letters[1:2], TRUE))

EDIT - to address your comment

Given that you want to specify which subject gets assigned to which treatment, Gavin's suggestion of merge is spot on. I would first make a new data.frame that contains one record for each unique subject, assign their treatment, and then merge them together:

treatments <- data.frame(subject = unique(dat$subject), treats = c("a", "b", "b", "a"))
merge(dat, treatments)

Note that the order of unique(dat$subject) is 1,4,2,6 which corresponds to the order of the values in the original data.frame. If your real problem contains more than four subjects, you may want to consider a more automated way of assigning treatments groups. One approach I've used in the past is to assign a random number to each respondent, and then assign groups based on a given threshold of that random number. It is essentially the same as the approach above, but can ensure that you get equal numbers in each group. For example:

dat <- ddply(dat, "subject", transform, treatment = runif(1))
dat <- within(dat, treatment <- ifelse(treatment < quantile(treatment, 0.5),"a", "b"))
share|improve this answer
err package! Martin Meachler won't be pleased! ;-) –  Gavin Simpson Jun 13 '11 at 14:00
@Gavin - duly noted and updated! –  Chase Jun 13 '11 at 14:40
and in return, a +1 :-) –  Gavin Simpson Jun 13 '11 at 15:24
@Gab - updated my answer to address your comment. –  Chase Jun 14 '11 at 1:50
Thanks perfect....sorry for the slow response –  Gab_27 Jun 23 '11 at 16:41

If you want to assign treatments at random, this will do it:

## subject IDs
subj <- with(dat, unique(subject))

## how many treatment levels?
ntreat <- 2

## sample an identifier for the treaments
treats <- sample(letters[seq_len(ntreat)], length(subj), replace = TRUE)

## stick this into a subject/treatment data frame
Treat <- data.frame(cbind(subject = subj, treatment = treats))

This gives:

R> Treat
  subject treatment
1       1         b
2       4         a
3       2         b
4       6         b


If the treatments have been pre-assigned, then just create the Treat data frame by hand;

Treat <- data.frame(subject = c(1,4,2,6), treatment = c("a","b","b","a"))

If you have lots of these to do you can use functions like seq() and rep(), plus the inbuilt letters constant to speed up the "data entry".

End edit

We can now use this data frame in a merge with the original data to insert the treatment for the respective subject, using merge():

R> merge(dat, Treat)
   subject rate treatment
1        1   12         b
2        1   10         b
3        1   13         b
4        2    9         b
5        2    2         b
6        2    5         b
7        4    4         a
8        4    6         a
9        4   12         a
10       6   17         b
11       6   10         b
12       6    1         b
share|improve this answer

I will assume you have some key how to transform this data, like for instance 1,6=>a, 4,2=>b. Then the ifelse and %in% mix should do the job:


The more general option is to copy this factor and alter its levels, but the details are dependent on how do you have your dictionary stored. Simple example:

x<-df$subject; levels(x)<-c('a','b','b','a')

(In both examples I assume that subject is a factor)

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.