I need to replace the levels of a factor column in a dataframe. Using the iris dataset as an example, how would I replace any cells which contain virginica with setosa in the Species column?

I expected the following to work, but it generates a warning message and simply inserts NAs:

iris$Species[iris$Species == 'virginica'] <- 'setosa'
  • Your example with iris just works. Can you replicate your problem in some other way? At the moment it's hard to understand what you want to do.
    – Andrie
    Commented Aug 4, 2012 at 17:34
  • Works for me. Which warning message you get?
    – sgibb
    Commented Aug 4, 2012 at 17:34
  • 1
    Its worked with iris when trying again. However applying the same to my dataset gives this: Warning message: In [<-.factor(*tmp*, x$Hweet == "hweet", value = c(NA_integer_, : invalid factor level, NAs generated
    – luciano
    Commented Aug 4, 2012 at 17:42
  • 4
    I strongly suspect that you want to operate on the levels of the factor rather than on the elements themselves ... based on your previous (very similar) question, I think you might get a bit farther by asking a slightly longer, reproducible, more complete question that explains what you're trying to do ...
    – Ben Bolker
    Commented Aug 4, 2012 at 17:44

9 Answers 9


I bet the problem is when you are trying to replace values with a new one, one that is not currently part of the existing factor's levels:

# [1] "setosa"     "versicolor" "virginica" 

Your example was bad, this works:

iris$Species[iris$Species == 'virginica'] <- 'setosa'

This is what more likely creates the problem you were seeing with your own data:

iris$Species[iris$Species == 'virginica'] <- 'new.species'
# Warning message:
# In `[<-.factor`(`*tmp*`, iris$Species == "virginica", value = c(1L,  :
#   invalid factor level, NAs generated

It will work if you first increase your factor levels:

levels(iris$Species) <- c(levels(iris$Species), "new.species")
iris$Species[iris$Species == 'virginica'] <- 'new.species'

If you want to replace "species A" with "species B" you'd be better off with

levels(iris$Species)[match("oldspecies",levels(iris$Species))] <- "newspecies"
  • 18
    but if you want to replace species A with species B you'd be better off with levels(iris$Species)[match("oldspecies",levels(iris$Species))] <- "newspecies"
    – Ben Bolker
    Commented Aug 4, 2012 at 17:55

For the things that you are suggesting you can just change the levels using the levels:

levels(iris$Species)[3] <- 'new'
  • Is there a one-shot way to do it on multiple columns? For example I've multiple columns with 'TRUE' and 'FALSE' values which I want to recode to '0','1'
    – UD1989
    Commented Dec 8, 2015 at 3:50
  • 1
    @UD1989, just use something like: mydf[] <- lapply(mydf, as.numeric)
    – Greg Snow
    Commented Dec 8, 2015 at 20:03
  • This really should be the top comment. Commented May 3, 2020 at 5:25

You can use the function revalue from the package plyr to replace values in a factor vector.

In your example to replace the factor virginica by setosa:

 revalue(iris$Species, c("virginica" = "setosa")) -> iris$Species
  • What if i don't have the old value ? //and don't want to fetch the old value just to use it in this methdod Commented Nov 25, 2014 at 11:51

Using dlpyr::mutate and forcats::fct_recode:


iris <- iris %>%  
  mutate(Species = fct_recode(Species,
    "Virginica" = "virginica",
    "Versicolor" = "versicolor"

iris %>% 

# A tibble: 3 x 2
     Species     n
      <fctr> <int>
1     setosa    50
2 Versicolor    50
3  Virginica    50   

I had the same problem. This worked better:

Identify which level you want to modify: levels(iris$Species)

    "setosa" "versicolor" "virginica" 

So, setosa is the first.

Then, write this:

     levels(iris$Species)[1] <-"new name"

A more general solution that works with all the data frame at once and where you don't have to add new factors levels is:

data.mtx <- as.matrix(data.df)
data.mtx[which(data.mtx == "old.value.to.replace")] <- "new.value"
data.df <- as.data.frame(data.mtx)

A nice feature of this code is that you can assign as many values as you have in your original data frame at once, not only one "new.value", and the new values can be random values. Thus you can create a complete new random data frame with the same size as the original.


You want to replace the values in a dataset column, but you're getting an error like this:

invalid factor level, NA generated

Try this instead:

levels(dataframe$column)[levels(dataframe$column)=='old_value'] <- 'new_value'


In case you have to replace multiple values and if you don't mind "refactoring" your variable with as.factor(as.character(...)) you could try the following:

replace.values <- function(search, replace, x){
  stopifnot(length(search) == length(replace))
  xnew <- replace[ match(x, search) ]
  takeOld <- is.na(xnew) & !is.na(x)
  xnew[takeOld] <- x[takeOld]

iris$Species <- as.factor(search=c("oldValue1","oldValue2"),


levels(iris$Species)[3] <- 'setosa'

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