# Change the class from factor to numeric of many columns in a data frame

What is the quickest/best way to change a large number of columns to numeric from factor?

I used the following code but it appears to have re-ordered my data.

``````> head(stats[,1:2])
rk                 team
1  1 Washington Capitals*
2  2     San Jose Sharks*
3  3  Chicago Blackhawks*
4  4     Phoenix Coyotes*
5  5   New Jersey Devils*
6  6   Vancouver Canucks*

for(i in c(1,3:ncol(stats))) {
stats[,i] <- as.numeric(stats[,i])
}

rk                 team
1  2 Washington Capitals*
2 13     San Jose Sharks*
3 24  Chicago Blackhawks*
4 26     Phoenix Coyotes*
5 27   New Jersey Devils*
6 28   Vancouver Canucks*
``````

What is the best way, short of naming every column as in:

``````df\$colname <- as.numeric(ds\$colname)
``````
• Isn't there any generic solution?. Some of the solutions proposed here only work with factors, other work always except with factors, and so on...
– skan
May 6, 2016 at 10:32

You have to be careful while changing factors to numeric. Here is a line of code that would change a set of columns from factor to numeric. I am assuming here that the columns to be changed to numeric are 1, 3, 4 and 5 respectively. You could change it accordingly

``````cols = c(1, 3, 4, 5);
df[,cols] = apply(df[,cols], 2, function(x) as.numeric(as.character(x)));
``````
• This won't work correctly. Example: `x<-as.factor(1:3); df<-data.frame(a=x,y=runif(3),b=x,c=x,d=x)`. I don't think that `apply` is appropriate to this kind of problems. Sep 26, 2010 at 15:07
• apply works perfectly in these situations. the error in my code was using margin = 1, instead of 2 as the function needs to be applied column wise. i have edited my answer accordingly. Sep 26, 2010 at 19:46
• Now it works. But I think it could be done without `apply`. Check my edit. Sep 27, 2010 at 10:00
• ... or Joris answer with `unlist`. And `as.character` conversion in your solution is not needed cause `apply` converts `df[,cols]` to `character` so `apply(df[,cols], 2, function(x) as.numeric(x))` will work too. Sep 27, 2010 at 10:12
• @Ramnath，why do you use `=`?why not `<-`? Apr 16, 2019 at 13:00

Further to Ramnath's answer, the behaviour you are experiencing is that due to `as.numeric(x)` returning the internal, numeric representation of the factor `x` at the R level. If you want to preserve the numbers that are the levels of the factor (rather than their internal representation), you need to convert to character via `as.character()` first as per Ramnath's example.

Your `for` loop is just as reasonable as an `apply` call and might be slightly more readable as to what the intention of the code is. Just change this line:

``````stats[,i] <- as.numeric(stats[,i])
``````

``````stats[,i] <- as.numeric(as.character(stats[,i]))
``````

This is FAQ 7.10 in the R FAQ.

HTH

• No need for any kind of loop. Just use the indices and unlist(). Edit : I added an answer illustrating this. Sep 26, 2010 at 22:19
• This approach only works in this specific case. I tried to use it to convert columns to `factor` and it didnt work. `sapply` or `mutate_if` seem to be more generally applicable solutions.
– Leo
Aug 16, 2017 at 13:04
• @Leo Care to expand, cos I know for a fact this works. It's exactly the same solution as Ramnath's below except he uses `apply` to run the loop and the OP was using a `for` loop explicitly. In fact, all the highly up-voted answers use the `as.numeric(as.character())` idiom. Aug 17, 2017 at 3:05
• Yes it works to change the class of multiple columns to `numeric`, but it does not work in reverse (to change the class of multiple columns to `factor`). If you use indices you need `unlist()` and when applied to columns with characters it unlists every single character, which makes it not work any more when putting the output back into `stats[,i]`. Check the answer here: stackoverflow.com/questions/45713473/…
– Leo
Aug 17, 2017 at 15:46
• @Leo of course it doesn't work in reverse! What on earth gave you the impression that it would? It was never designed and the OP never asked for that. Hard to answer questions that aren't asked. If you want to convert to a factor use `as.factor()` in place of `as.numeric(as.character())` here and it'll work just fine. Of course, if you have a mix of columns you'll need to choose `i` selectively, but that i also trivial. Aug 18, 2017 at 15:56

This can be done in one line, there's no need for a loop, be it a for-loop or an apply. Use unlist() instead :

``````# testdata
Df <- data.frame(
x = as.factor(sample(1:5,30,r=TRUE)),
y = as.factor(sample(1:5,30,r=TRUE)),
z = as.factor(sample(1:5,30,r=TRUE)),
w = as.factor(sample(1:5,30,r=TRUE))
)
##

Df[,c("y","w")] <- as.numeric(as.character(unlist(Df[,c("y","w")])))

str(Df)
``````

Edit : for your code, this becomes :

``````id <- c(1,3:ncol(stats)))
stats[,id] <- as.numeric(as.character(unlist(stats[,id])))
``````

Obviously, if you have a one-column data frame and you don't want the automatic dimension reduction of R to convert it to a vector, you'll have to add the `drop=FALSE` argument.

• Small improvement could be setting `recursive` and `use.names` parameters of `unlist` both to `FALSE`. Sep 27, 2010 at 10:10
• @Marek : true. I love this game :-) Sep 27, 2010 at 11:49
• I am just going to add for those looking for answers in the future, this is not equivalent to op + gavin's method if the dataframe is of only one column. It will convert to a vector in that case, whereas op's will still be a dataframe. Feb 27, 2013 at 3:15
• for those working with tidyverse: interestingly, this does not seem to work when the object is also a tibble: The code fails after `Df <- tibble::as_tibble(Df)` Jun 3, 2020 at 15:21
• @Tjebo with the updates of tibble and the diversion between tibbles and data frames, this old approach isn't the best option in tidyverse indeed. You better make use of the tidyselect functions in combination with `mutate_if`. Or whatever new approach is made available in the next iteration of `dplyr`... Jun 6, 2020 at 12:38

I know this question is long resolved, but I recently had a similar issue and think I've found a little more elegant and functional solution, although it requires the magrittr package.

``````library(magrittr)
cols = c(1, 3, 4, 5)
df[,cols] %<>% lapply(function(x) as.numeric(as.character(x)))
``````

The `%<>%` operator pipes and reassigns, which is very useful for keeping data cleaning and transformation simple. Now the list apply function is much easier to read, by only specifying the function you wish to apply.

• neat solution. you forgot one bracket but I can't make this edit because it's too short: `df[,cols] %<>% lapply(function(x) as.numeric(as.character(x)))`
– epo3
Sep 15, 2016 at 9:51
• I don't think you even need to wrap that in lappy `df[,cols] %<>% as.numeric(as.character(.))` works the same
– Nate
Oct 4, 2016 at 20:07
• when I try this command I get the following error `Error in [.data.table(Results, , cols) : j (the 2nd argument inside [...]) is a single symbol but column name 'cols' is not found. Perhaps you intended DT[,..cols] or DT[,cols,with=FALSE]. This difference to data.frame is deliberate and explained in FAQ 1.1.` Oct 11, 2017 at 17:15
• Code is like: `cols <- c("a","b"); df[,cols] %<>% lapply(function(x) as.numeric(as.character(x)))` Oct 11, 2017 at 17:17
– Joe
Feb 22, 2018 at 16:14

Here are some `dplyr` options:

``````# by column type:
df %>%
mutate_if(is.factor, ~as.numeric(as.character(.)))

# by specific columns:
df %>%
mutate_at(vars(x, y, z), ~as.numeric(as.character(.)))

# all columns:
df %>%
mutate_all(~as.numeric(as.character(.)))
``````
• the most clear and simple solution, thanks! Jun 19, 2023 at 14:35

I think that ucfagls found why your loop is not working.

In case you still don't want use a loop here is solution with `lapply`:

``````factorToNumeric <- function(f) as.numeric(levels(f))[as.integer(f)]
cols <- c(1, 3:ncol(stats))
stats[cols] <- lapply(stats[cols], factorToNumeric)
``````

Edit. I found simpler solution. It seems that `as.matrix` convert to character. So

``````stats[cols] <- as.numeric(as.matrix(stats[cols]))
``````

should do what you want.

lapply is pretty much designed for this

``````unfactorize<-c("colA","colB")
df[,unfactorize]<-lapply(unfactorize, function(x) as.numeric(as.character(df[,x])))
``````
• Hi @transcom, and welcome to stackoverflow. Note that this question is about converting to numeric representation from a factor, not the other way around. See Marek's solution. Feb 10, 2014 at 16:54
• @Aaron, understood. I posted this answer due to the ambiguity of the OP's title, operating under the assumption that others may land here looking for a way to convert multiple columns easily, regardless of class. Anyway, I've edited my answer to more appropriately address the question :) Feb 18, 2014 at 16:56

I found this function on a couple other duplicate threads and have found it an elegant and general way to solve this problem. This thread shows up first on most searches on this topic, so I am sharing it here to save folks some time. I take no credit for this just so see the original posts here and here for details.

``````df <- data.frame(x = 1:10,
y = rep(1:2, 5),
k = rnorm(10, 5,2),
z = rep(c(2010, 2012, 2011, 2010, 1999), 2),
j = c(rep(c("a", "b", "c"), 3), "d"))

convert.magic <- function(obj, type){
FUN1 <- switch(type,
character = as.character,
numeric = as.numeric,
factor = as.factor)
out <- lapply(obj, FUN1)
as.data.frame(out)
}

str(df)
str(convert.magic(df, "character"))
str(convert.magic(df, "factor"))
df[, c("x", "y")] <- convert.magic(df[, c("x", "y")], "factor")
``````

I would like to point out that if you have NAs in any column, simply using subscripts will not work. If there are NAs in the factor, you must use the apply script provided by Ramnath.

E.g.

``````Df <- data.frame(
x = c(NA,as.factor(sample(1:5,30,r=T))),
y = c(NA,as.factor(sample(1:5,30,r=T))),
z = c(NA,as.factor(sample(1:5,30,r=T))),
w = c(NA,as.factor(sample(1:5,30,r=T)))
)

Df[,c(1:4)] <- as.numeric(as.character(Df[,c(1:4)]))
``````

Returns the following:

``````Warning message:
NAs introduced by coercion

x  y  z  w
1 NA NA NA NA
2 NA NA NA NA
3 NA NA NA NA
4 NA NA NA NA
5 NA NA NA NA
6 NA NA NA NA
``````

But:

``````Df[,c(1:4)]= apply(Df[,c(1:4)], 2, function(x) as.numeric(as.character(x)))
``````

Returns:

``````> head(Df)
x  y  z  w
1 NA NA NA NA
2  2  3  4  1
3  1  5  3  4
4  2  3  4  1
5  5  3  5  5
6  4  2  4  4
``````

you can use `unfactor()` function from "varhandle" package form CRAN:

``````library("varhandle")

my_iris <- data.frame(Sepal.Length = factor(iris\$Sepal.Length),
sample_id = factor(1:nrow(iris)))

my_iris <- unfactor(my_iris)
``````

I like this code because it's pretty handy:

``````  data[] <- lapply(data, function(x) type.convert(as.character(x), as.is = TRUE)) #change all vars to their best fitting data type
``````

It is not exactly what was asked for (convert to numeric), but in many cases even more appropriate.

• Can you explain what the brackets are for in `data[]` and why they're necessary in this case?
– coip
Aug 27, 2022 at 21:09
• If you skip the brackets, you loose the data.frame format and get a list. Aug 29, 2022 at 13:36

Based on @SDahm's answer, this was an "optimal" solution for my `tibble`:

``````data %<>% lapply(type.convert) %>% as.data.table()
``````

This requires `dplyr` and `magrittr`.

I tried a bunch of these on a similar problem and kept getting NAs. Base R has some really irritating coercion behaviors, which are generally fixed in Tidyverse packages. I used to avoid them because I didn't want to create dependencies, but they make life so much easier that now I don't even bother trying to figure out the Base R solution most of the time.

Here's the Tidyverse solution, which is extremely simple and elegant:

``````library(purrr)

mydf <- data.frame(
x1 = factor(c(3, 5, 4, 2, 1)),
x2 = factor(c("A", "C", "B", "D", "E")),
x3 = c(10, 8, 6, 4, 2))

map_df(mydf, as.numeric)
``````
• Most of the answers (at least all the top answers) make sure to do the `as.numeric(as.character())` conversion to avoid the all-too-common conversion of integer levels instead of values to numeric. I'd happily upvote this answer if you show that option. Feb 4, 2019 at 16:19

`df\$colname <- as.numeric(df\$colname)`

I tried this way for changing one column type and I think it is better than many other versions, if you are not going to change all column types

`df\$colname <- as.character(df\$colname)`

for the vice versa.

I had problems converting all columns to numeric with an `apply()` call:

``````apply(data, 2, as.numeric)
``````

The problem turns out to be because some of the strings had a comma in them -- e.g. "1,024.63" instead of "1024.63" -- and R does not like this way of formatting numbers. So I removed them and then ran `as.numeric()`:

``````data = as.data.frame(apply(data, 2, function(x) {
y = str_replace_all(x, ",", "") #remove commas
return(as.numeric(y)) #then convert
}))
``````

Note that this requires the stringr package to be loaded.

That's what's worked for me. The `apply()` function tries to coerce df to matrix and it returns NA's.

`numeric.df <- as.data.frame(sapply(df, 2, as.numeric))`