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I have a data frame. Let's call him bob:

> head(bob)
                 phenotype                         exclusion
GSM399350 3- 4- 8- 25- 44+ 11b- 11c- 19- NK1.1- Gr1- TER119-
GSM399351 3- 4- 8- 25- 44+ 11b- 11c- 19- NK1.1- Gr1- TER119-
GSM399352 3- 4- 8- 25- 44+ 11b- 11c- 19- NK1.1- Gr1- TER119-
GSM399353 3- 4- 8- 25+ 44+ 11b- 11c- 19- NK1.1- Gr1- TER119-
GSM399354 3- 4- 8- 25+ 44+ 11b- 11c- 19- NK1.1- Gr1- TER119-
GSM399355 3- 4- 8- 25+ 44+ 11b- 11c- 19- NK1.1- Gr1- TER119-

I'd like to concatenate the rows of this data frame (this will be another question). But look:

> class(bob$phenotype)
[1] "factor"

Bob's columns are factors. So, for example:

> as.character(head(bob))
[1] "c(3, 3, 3, 6, 6, 6)"       "c(3, 3, 3, 3, 3, 3)"      
[3] "c(29, 29, 29, 30, 30, 30)"

I don't begin to understand this, but I guess these are indices into the levels of the factors of the columns (of the court of king caractacus) of bob? Not what I need.

Strangely I can go through the columns of bob by hand, and do

bob$phenotype <- as.character(bob$phenotype)

which works fine. And, after some typing, I can get a data.frame whose columns are characters rather than factors. So my question is: how can I do this automatically? How do I convert a data.frame with factor columns into a data.frame with character columns without having to manually go through each column?

Bonus question: why does the manual approach work?

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10 Answers 10

up vote 74 down vote accepted

Just following on Matt and Dirk. If you want to recreate your existing data frame without changing the global option, you can recreate it with an apply statement:

bob <- data.frame(lapply(bob, as.character), stringsAsFactors=FALSE)

This will convert all variables to class "character", if you want to only convert factors, see Marek's solution below.

As @hadley points out, the following is more concise.

bob[] <- lapply(bob, as.character)

In both cases, lapply outputs a list; however, owing to the magical properties of R, the use of [] in the second case keeps the data.frame class of the bob object, thereby eliminating the need to convert back to a data.frame using as.data.frame with the argument stringsAsFactors = FALSE.

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This seems to be the way forward in answer to my question. Thanks! –  Mike Dewar May 17 '10 at 18:10
6  
Shane, that'll also turn numerical columns into character. –  Dirk Eddelbuettel May 17 '10 at 18:38
    
@Dirk: That's true, although it isn't clear whether that's a problem here. Clearly, creating things correctly up front is the best solution. I don't think that it's easy to automatically convert data types across a data frame. One option is to use the above but then use type.convert after casting everything to character, then recast factors back to character again. –  Shane May 17 '10 at 18:56
2  
Or more concisely: bob[] <- lapply(bob, as.character) –  hadley Jun 30 '12 at 20:44
    
This seems to discard row names. –  piccolbo Jul 22 '13 at 17:04

To replace only factors:

i <- sapply(bob, is.factor)
bob[i] <- lapply(bob[i], as.character)
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2  
That's some really useful code that can be quickly converted to a one-liner.... –  Ananda Mahto Jul 7 '12 at 7:31
    
+1 Nicely preserves int while changing those pesky factors –  demongolem Sep 25 '13 at 19:33
    
+1 Saved my day –  mags Dec 11 '13 at 9:28
    
Not working for me, sadly. Don't know why. Probably because I have colnames? –  mohawkjohn Jul 18 at 16:32
    
@mohawkjohn Shouldn't be issue. You got error or results not as you expected? –  Marek Jul 20 at 21:51

The global option

stringsAsFactors: The default setting for arguments of data.frame and read.table.

may be something you want to set yo FALSE in your startup files (e.g. ~/.Rprofile). See help(options).

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1  
thanks for this! Things like this are constantly biting me as I scrabble up the R learning curve! –  Mike Dewar May 17 '10 at 18:09
    
@Dirk : Thanks for this. Didn't know about this. –  Jdbaba Jul 14 '13 at 8:14

I know this answer is a bit late, but if you understand how factors are stored, you can avoid using apply-based functions to accomplish this. Which isn't at all to imply that the apply solutions don't work well.

Factors are structured as numeric indices tied to a list of 'levels'. This can be seen if you convert a factor to numeric. So:

> fact <- as.factor(c("a","b","a","d")
> fact
[1] a b a d
Levels: a b d

> as.numeric(fact)
[1] 1 2 1 3

The numbers returned in the last line correspond to the levels of the factor.

> levels(fact)
[1] "a" "b" "d"

Notice that levels() returns an array of characters. You can use this fact to easily and compactly convert factors to strings or numerics like this:

> fact_character <- levels(fact)[as.numeric(fact)]
> fact_character
[1] "a" "b" "a" "d"

This also works for numeric values, provided you wrap your expression in as.numeric().

> num_fact <- factor(c(1,2,3,6,5,4))
> num_fact
[1] 1 2 3 6 5 4
Levels: 1 2 3 4 5 6
> num_num <- as.numeric(levels(num_fact)[as.numeric(num_fact)])
> num_num
[1] 1 2 3 6 5 4
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If you want a new data frame bobc where every factor vector in bobf is converted to a character vector, try this:

bobc <- rapply(bobf, as.character, classes="factor", how="replace")

If you then want to convert it back, you can create a logical vector of which columns are factors, and use that to selectively apply factor

f <- sapply(bobf, class) == "factor"
bobc[,f] <- lapply(bobc[,f], factor)
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+1 for doing only what was necessary (i.e. not converting the entire data.frame to character). This solution is robust to a data.frame that contains mixed types. –  Joshua Ulrich Aug 1 '13 at 21:42
    
This example should be in the `Examples' section for rapply, like at: stat.ethz.ch/R-manual/R-devel/library/base/html/rapply.html . Anyone know how to request that that be so? –  mpettis Aug 2 '13 at 3:13

Or you can try transform:

newbob <- transform(bob, phenotype = as.character(phenotype))

Just be sure to put every factor you'd like to convert to character.

Or you can do something like this and kill all the pests with one blow:

newbob_char <- as.data.frame(lapply(bob[sapply(bob, is.factor)], as.character), stringsAsFactors = FALSE)
newbob_rest <- bob[!(sapply(bob, is.factor))]
newbob <- cbind(newbob_char, newbob_rest)

It's not good idea to shove the data in code like this, I could do the sapply part separately (actually, it's much easier to do it like that), but you get the point... I haven't checked the code, 'cause I'm not at home, so I hope it works! =)

This approach, however, has a downside... you must reorganize columns afterwards, while with transform you can do whatever you like, but at cost of "pedestrian-style-code-writting"...

So there... =)

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Another way is to convert it using apply

bob2 <- apply(bob,2,as.character)

And a better one (the previous is of class 'matrix')

bob2 <- as.data.frame(as.matrix(bob),stringsAsFactors=F)
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Following @Shane's comment: in order to get data.frame, do as.data.frame(lapply(... –  aL3xa May 17 '10 at 18:08

Update: Here's an example of something that doesn't work. I thought it would, but I think that the stringsAsFactors option only works on character strings - it leaves the factors alone.

Try this:

bob2 <- data.frame(bob, stringsAsFactors = FALSE)

Generally speaking, whenever you're having problems with factors that should be characters, there's a stringsAsFactors setting somewhere to help you (including a global setting).

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1  
This does work, if he sets it when creating bob to begin with (but not after the fact). –  Shane May 17 '10 at 17:18
    
Right. Just wanted to be clear that this doesn't solve the problem, per se - but thanks for noting that it does prevent it. –  Matt Parker May 17 '10 at 17:34

I typically make this function apart of all my projects. Quick and easy.

unfactorize <- function(df){
  for(i in which(sapply(df, class) == "factor")) df[[i]] = as.character(df[[i]])
  return(df)
}
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This works for me - I finally figured a one liner

df <- as.data.frame(lapply(df,function (y) if(class(y)=="factor" ) as.character(y) else y),stringsAsFactors=F)
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