22

I'm using a data frame similar to this one:

df<-data.frame(student=c(rep(1,5),rep(2,5)), month=c(1:5,1:5),  
      quiz1p1=seq(20,20.9,0.1),quiz1p2=seq(30,30.9,0.1),  
      quiz2p1=seq(80,80.9,0.1),quiz2p2=seq(90,90.9,0.1))      

print(df)  

   student month quiz1p1 quiz1p2 quiz2p1 quiz2p2  
1     1     1    20.0    30.0    80.0    90.0  
2     1     2    20.1    30.1    80.1    90.1  
3     1     3    20.2    30.2    80.2    90.2  
4     1     4    20.3    30.3    80.3    90.3
5     1     5    20.4    30.4    80.4    90.4
6     2     1    20.5    30.5    80.5    90.5
7     2     2    20.6    30.6    80.6    90.6
8     2     3    20.7    30.7    80.7    90.7
9     2     4    20.8    30.8    80.8    90.8
10    2     5    20.9    30.9    80.9    90.9

Describing grades received by students during five months – in two quizzes divided into two parts each.

I need to get the two quizzes into separate rows – so that each student in each month will have two rows, one for each quiz, and two columns – for each part of the quiz. When I melt the table:

melt.data.frame(df, c("student", "month"))

I get the two parts of the quiz in separate lines too.

dcast(dfL,student+month~variable)

of course gets me right back where I started, and I can't find a way to cast the table back in to the required form. Is there a way to make the melt command function something like:

melt.data.frame(df, measure.var1=c("quiz1p1","quiz2p1"), 
                measure.var2=c("quiz1p2","quiz2p2"))  
2

3 Answers 3

12

Here's how you could do this with reshape(), from base R:

df2 <- reshape(df, direction="long",
               idvar = 1:2, varying = list(c(3,5), c(4,6)),
               v.names = c("p1", "p2"), times = c("quiz1", "quiz2"))

## Checking the output    
rbind(head(df2, 3), tail(df2, 3))
#           student month  time   p1   p2
# 1.1.quiz1       1     1 quiz1 20.0 30.0
# 1.2.quiz1       1     2 quiz1 20.1 30.1
# 1.3.quiz1       1     3 quiz1 20.2 30.2
# 2.3.quiz2       2     3 quiz2 80.7 90.7
# 2.4.quiz2       2     4 quiz2 80.8 90.8
# 2.5.quiz2       2     5 quiz2 80.9 90.9

You can also use column names (instead of column numbers) for idvar and varying. It's more verbose, but seems like better practice to me:

## The same operation as above, using just column *names*
df2 <- reshape(df, direction="long", idvar=c("student", "month"),
               varying = list(c("quiz1p1", "quiz2p1"), 
                              c("quiz1p2", "quiz2p2")), 
               v.names = c("p1", "p2"), times = c("quiz1", "quiz2"))
10
  • 1
    Thanks for that answer. Nice illustration of the use of 'v.names' and 'times'.
    – IRTFM
    Oct 11, 2012 at 18:37
  • 2
    @DWin -- Sure 'nuff. I think you and I are the main proponents for plain old reshape() around these parts. (I can't think of any R function with a more opaque man page (or less helpful examples), so learning to use it entails a really steep learning curve.) Oct 11, 2012 at 18:45
  • 2
    Exactly. I think this problem and answer would be a good addition to the Examples section for the help page.
    – IRTFM
    Oct 11, 2012 at 19:03
  • I've thought before of working up an alternative Examples section for reshape(). Is there any realistic route for something like that making it's way into a base package? Oct 11, 2012 at 19:06
  • 1
    @eli-k -- It might be better to think of Hadley's packages as more user-friendly rather than more advanced. The R core team includes some pretty impressive and experienced programmers, and a function like reshape() has been around long enough that it's become pretty well battle-hardened. So, in a number of ways that count, core R included much of the most 'advanced' code in the R universe. (By the way, glad you appreciated this alternative solution.) Oct 12, 2012 at 7:06
7

I think this does what you want:

#Break variable into two columns, one for the quiz and one for the part of the quiz
dfL <- transform(dfL, quiz = substr(variable, 1,5), 
                 part = substr(variable, 6,7))

#Adjust your dcast call:
dcast(dfL, student + month + quiz ~ part)
#-----
   student month  quiz   p1   p2
1        1     1 quiz1 20.0 30.0
2        1     1 quiz2 80.0 90.0
3        1     2 quiz1 20.1 30.1
...
18       2     4 quiz2 80.8 90.8
19       2     5 quiz1 20.9 30.9
20       2     5 quiz2 80.9 90.9
1
  • Thanks for this great solution @Chase. although I prefer the built-in solution in general, your solution looks like it would require less code in more complex df's. For example, if each quiz was devided into six parts, I wouldn't have to add anything to your code while I would have to write six pairs of column names in the reshape function.
    – eli-k
    Oct 12, 2012 at 7:18
3

There was a very similar question asked about half a year ago, in which I wrote the following function:

melt.wide = function(data, id.vars, new.names) {
  require(reshape2)
  require(stringr)
  data.melt = melt(data, id.vars=id.vars)
  new.vars = data.frame(do.call(
    rbind, str_extract_all(data.melt$variable, "[0-9]+")))
  names(new.vars) = new.names
  cbind(data.melt, new.vars)
}

You can use the function to "melt" your data as follows:

dfL <-melt.wide(df, id.vars=1:2, new.names=c("Quiz", "Part"))
head(dfL)
#   student month variable value Quiz Part
# 1       1     1  quiz1p1  20.0    1    1
# 2       1     2  quiz1p1  20.1    1    1
# 3       1     3  quiz1p1  20.2    1    1
# 4       1     4  quiz1p1  20.3    1    1
# 5       1     5  quiz1p1  20.4    1    1
# 6       2     1  quiz1p1  20.5    1    1
tail(dfL)
#    student month variable value Quiz Part
# 35       1     5  quiz2p2  90.4    2    2
# 36       2     1  quiz2p2  90.5    2    2
# 37       2     2  quiz2p2  90.6    2    2
# 38       2     3  quiz2p2  90.7    2    2
# 39       2     4  quiz2p2  90.8    2    2
# 40       2     5  quiz2p2  90.9    2    2

Once the data are in this form, you can much more easily use dcast() to get whatever form you desire. For example

head(dcast(dfL, student + month + Quiz ~ Part))
#   student month Quiz    1    2
# 1       1     1    1 20.0 30.0
# 2       1     1    2 80.0 90.0
# 3       1     2    1 20.1 30.1
# 4       1     2    2 80.1 90.1
# 5       1     3    1 20.2 30.2
# 6       1     3    2 80.2 90.2
2
  • Thanks for suggesting this solution @mrdwab. It took me a while to understand how it's supposed to work, but now that I get it I can see how your function and your general approach to the problem can be useful in this situation and in other situations too.
    – eli-k
    Oct 12, 2012 at 7:39
  • 1
    @eli-k, don't forget that for most functions, you can simply write the function name at the console (eg > reshape) to see the code that powers them. Then, you can run different parts of the function, seeing what is done at each step. That can be a useful way to learn some fun coding tricks. Oct 12, 2012 at 8:22

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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