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Can anyone explain to me why the following example occurs?

#Create simple dataframe
assign( "df" , data.frame( P = runif(5) , Q = runif(5) , R = runif(5) ) ) 

#Return the dataframe from the given character vector
get( "df" ) 
            P          Q          R
1  0.17396222 0.90994676 0.90590685
2  0.33860092 0.98078739 0.38058921
3  0.80751402 0.93229290 0.82853094
4  0.05460417 0.55448507 0.01605027
5  0.04250316 0.03808318 0.40678270

#Return the column names of df
colnames( get( "df" ) )
[1] "P" "Q" "R"

#But using a replacement function...
colnames( get( "df" ) ) <- c( "S" , "T" , "U" ) 
    Error in colnames(get("df")) <- c("S", "T", "U") : 
    target of assignment expands to non-language object

I'd A) like to know why the replacement functions won't work in this way with get()?

And b) if there is some way to work around this, given my problem which I outline below;

My problem is that I have many objects, created (using a toy example) in a loop, something like this: assign( paste( "Object" , i , sep = "." ) , rnorm(1000 , i) ), where i is a vector, say i <- 1:1000 and then I would like to be able to assign names (for instance from a different vector) to each object in the loop, but names( get( paste( "Object" , i , sep = "." ) ) <- someNewName doesn't work as in the example above.

But get( paste( "Object" , i , sep = "." ) ) does return the names (or NULL) of those objects.


share|improve this question
For your specific question, try setNames. In general, I don't know why it doesn't work: I look forward to reading an edifying answer. –  Blue Magister Jan 22 '13 at 17:28
Don't use assign. Put all objects created in your loop into a list instead. There is a good chance that you don't even need a for loop. –  Roland Jan 22 '13 at 17:34
I know I probably don't need a for loop, it was just sheer convenience. Honestly, the overhead of calling the loop to create objects is minimal, < 0.1 seconds, so I'm not rigidly determined to vectorise everything in this case. It's a useful convenience construct that has it's place for the lazy coder (plus I'm doing a few other renaming assignments in the loop on different object, so it really is just convenient). –  Simon O'Hanlon Jan 22 '13 at 17:37
:hand waving: evaulation, blah blah blah, :more hand waving: Try 'colnames<-'(get('df'),c('A','B','C')) and colnames(data.frame( P = runif(5) , Q = runif(5) , R = runif(5) )) <- c('A','B','C') –  joran Jan 22 '13 at 17:39
@SimonO101 I take your point to Roland, but in my view there has to be a really compelling reason to use assign and get rather than the more R-like paradigm of lapply and working with lists. I'd be keen to understand why you want to avoid working with lists. –  Andrie Jan 22 '13 at 17:45
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2 Answers

up vote 11 down vote accepted

To understand why this doesn't work, you need to understand what colnames<- does. Like every function in that looks like it's modifying an object, it's actually modifying a copy, so conceptually colnames(x) <- y gets expanded to:

copy <- x
colnames(copy) <- y
x <- copy

which can be written a little more compactly if you call the replacement operator in the usual way:

x <- `colnames<-`(x, y)

So your example becomes

get("x") <- `colnames<-`(get("x"), y)

The right side is valid R, but the command as a whole is not, because you can't assign something to the result of a function:

x <- 1
get("x") <- 2
# Error in get("x") <- 2 : 
#  target of assignment expands to non-language object
share|improve this answer
Thank you very much for a clear and concise explanation to my question. This exactly what I was hoping for. –  Simon O'Hanlon Jan 22 '13 at 19:20
@SimonO101 Tweaked slightly to make more accurate. There are a few more details at github.com/hadley/devtools/wiki/Functions (search for "replacement functions") –  hadley Jan 22 '13 at 19:29
Thanks hadley - i'm heading over to devtools now! –  Simon O'Hanlon Jan 22 '13 at 19:31
add comment

Using assign in the way you demonstrate in the question is at least uncommon in R. Normally you would just put all objects in a list.

So, instead of

for (i in 1:10) {
assign( paste( "Object" , i , sep = "." ) , rnorm(1000 , i) )}

you would do

objects <- list()
for (i in 1:10) {
objects[[i]] <- rnorm(1000 , i) }

In fact, this construct is so common that there is a (optimized) function (lapply), which does something similar:

objects <- lapply(1:10, function(x) rnorm(1000,x))

You can then access, e.g., the first object as objects[[1]] and there are several functions for working with lists.

share|improve this answer
Almost +1, and I will upvote if you also add the lapply version. –  Andrie Jan 22 '13 at 17:46
Your wish is my command. –  Roland Jan 22 '13 at 17:48
+1 lapply() is the way to go here. It will simplify code, and may even be faster than the for loop, simply because <- is a relatively slow operation. –  Andrie Jan 22 '13 at 17:50
This is also wrong! ls[[i]] should be objects[[i]] –  Simon O'Hanlon Jan 22 '13 at 17:53
@SimonO101 Thanks for pointing out the typo. –  Roland Jan 22 '13 at 17:55
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