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I'd like to rename a subset of columns in a large data frame. I'd expect the following code to rename columns X4,X5,X6 and X7 to gradek, grade1, grade2, and grade3 respectively:

set.seed(1)
in.df <- data.frame( matrix( rnorm(60), ncol=10) )
names(in.df) <- ifelse( names(in.df) %in% c('X4', 'X5', 'X6', 'X7'),
                         paste('grade', c('k',1:3), sep=''),
                         names(in.df) )

However,

> names(in.df)
 [1] "X1"     "X2"     "X3"     "grade3" "gradek" "grade1" "grade2" "X8"    
 [9] "X9"     "X10"   

even though

> paste('grade', c('k',1:3), sep='')
[1] "gradek" "grade1" "grade2" "grade3"

showing that the order isn't preserved. This thread, suggests that using match instead of %in% would work, but in this case it does not. ( Perhaps that was true in other versions of R. In my installed version (2.15.3), the help page on match suggests that %in% is defined via match so switching it up would be of no help. )

Any help would be appreciated!

Accepted answers This answer fixes my renaming problem. This answer explains the weird behavior is due to recycling.

share|improve this question
    
I think it's because your yes condition isn't the same length as your no condition. Note the discussion of recycling in the docs. –  joran Apr 19 '13 at 18:06
    
I think you are right. Huh. I'll play with this a bit. –  Nathan VanHoudnos Apr 19 '13 at 18:10
    
Why can't you just use something like names(in.df)[names(in.df) %in% c("X4", "X5", "X6", "X7")] <- paste('grade', c('k',1:3), sep='')? –  Ananda Mahto Apr 19 '13 at 18:12
    
@AnandaMahto I was just about to post that as an answer...I think you should make that official. –  joran Apr 19 '13 at 18:12
    
@AnandaMahto That would work. I had previously tried names(in.df[,c("X4", "X5", "X6", "X7")]) <- paste('grade', c('k',1:3), sep='') which doesn't. It hadn't occurred to me that what I need to subset was the call to names not the data frame itself. –  Nathan VanHoudnos Apr 19 '13 at 18:17

2 Answers 2

up vote 5 down vote accepted

%in% should work, but perhaps match is better.

Consider the following. "A" and "B" represent your names(in.df). We want to replace the values in "matchme" in that order using the results of paste('grade', c('k',1:3), sep='').

Compare the different output:

A <- B <- c("X1", "X2", "X3", "X4", "X5", "X6", "X7", "X8", "X9", "X10")
matchme <- c('X4', 'X7', 'X6', 'X5')
A[A %in% matchme] <- paste('grade', c('k',1:3), sep='')
A
#  [1] "X1"     "X2"     "X3"     "gradek" "grade1" "grade2" "grade3" "X8"    
#  [9] "X9"     "X10"  
B[match(matchme, B)] <- paste('grade', c('k',1:3), sep='')
B
#  [1] "X1"     "X2"     "X3"     "gradek" "grade3" "grade2" "grade1" "X8"    
#  [9] "X9"     "X10"   
share|improve this answer
    
I don't understand your example. The %in% operator produces the correct order while the match function does not. –  Nathan VanHoudnos Apr 19 '13 at 18:27
    
@NathanVanHoudnos It's because of the order in matchme. If you put those in the "right" order it will work the same. –  joran Apr 19 '13 at 18:29
    
@NathanVanHoudnos, read my preamble and why I'm suggesting match. My point is that I can specify order with match (replace X4 with gradek, x7 with grade1, and so on) but I can't do that with %in%. –  Ananda Mahto Apr 19 '13 at 18:30
    
I could have spent the time to think of a better example, but it's midnight where I am and I'm calling it a day :) –  Ananda Mahto Apr 19 '13 at 18:31
1  
Ah, I didn't see that matchme permuted the order! I see the difference now. Thanks for your help. And get some sleep. :) –  Nathan VanHoudnos Apr 19 '13 at 18:32

Ananda's answer gives a good approach of how to do what you want. I will instead answer the question as to why you got the results you did rather than the ones you expected.

The reason the names seem out of order is related to how ifelse works and argument recycling. Let's look at the three arguments to ifelse:

> list(names(in.df) %in% c('X4', 'X5', 'X6', 'X7'),
+      paste('grade', c('k',1:3), sep=''),
+      names(in.df))
[[1]]
 [1] FALSE FALSE FALSE  TRUE  TRUE  TRUE  TRUE FALSE FALSE FALSE

[[2]]
[1] "gradek" "grade1" "grade2" "grade3"

[[3]]
 [1] "X1"  "X2"  "X3"  "X4"  "X5"  "X6"  "X7"  "X8"  "X9"  "X10"

ifelse decides which corresponding element to pick based on whether the first argument is TRUE or FALSE. But the second argument is not as long as the first, so it is recycled to be the right length. Putting these into a data.frame so that looking at them side-by-side is easier, and manually expanding out the second set of names, gives:

> data.frame(test = names(in.df) %in% c('X4', 'X5', 'X6', 'X7'),
+            `TRUE` = rep(paste('grade', c('k',1:3), sep=''),length=10),
+            `FALSE` = names(in.df))
    test  TRUE. FALSE.
1  FALSE gradek     X1
2  FALSE grade1     X2
3  FALSE grade2     X3
4   TRUE grade3     X4
5   TRUE gradek     X5
6   TRUE grade1     X6
7   TRUE grade2     X7
8  FALSE grade3     X8
9  FALSE gradek     X9
10 FALSE grade1    X10

So the 4th, 5th, 6th, and 7th elements of the new names are used, which correspond, due to argument recycling, to the 4th, 1st, 2nd, and 3rd.

share|improve this answer
    
Nicely explained. +1 –  Ananda Mahto Apr 19 '13 at 18:43
    
Totally not a never mind! Thank you for answering the other part of my question. +1. –  Nathan VanHoudnos Apr 19 '13 at 18:49
    
+1 - nice explanation going from list to data.frame to explain recycling –  Ricardo Saporta Apr 19 '13 at 19:04

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