I have a data frame containing a factor. When I create a subset of this data frame using subset() or another indexing function, a new data frame is created. However, the factor variable retains all of its original levels -- even when they do not exist in the new data frame.

This creates headaches when doing faceted plotting or using functions that rely on factor levels.

What is the most succinct way to remove levels from a factor in my new data frame?

Here's my example:

df <- data.frame(letters=letters[1:5],

## [1] "a" "b" "c" "d" "e"

subdf <- subset(df, numbers <= 3)
##   letters numbers
## 1       a       1
## 2       b       2
## 3       c       3    

## but the levels are still there!
## [1] "a" "b" "c" "d" "e"

12 Answers 12

up vote 336 down vote accepted

All you should have to do is to apply factor() to your variable again after subsetting:

> subdf$letters
[1] a b c
Levels: a b c d e
subdf$letters <- factor(subdf$letters)
> subdf$letters
[1] a b c
Levels: a b c


From the factor page example:

factor(ff)      # drops the levels that do not occur

For dropping levels from all factor columns in a dataframe, you can use:

subdf <- subset(df, numbers <= 3)
subdf[] <- lapply(subdf, function(x) if(is.factor(x)) factor(x) else x)
  • 17
    That's fine for a one-off, but in a data.frame with a large number of columns, you get to do that on every column that is a factor ... leading to the need for a function such as drop.levels() from gdata. – Dirk Eddelbuettel Jul 29 '09 at 14:16
  • 6
    I see... but from a user-perspective it's quick to write something like subdf[] <- lapply(subdf,function(x) if(is.factor(x)) factor(x) else x) ...Is drop.levels() much more efficient computationally or better with large data sets? (One would have to rewrite the line above in a for-loop for a huge data frame, I suppose.) – hatmatrix Jul 29 '09 at 17:09
  • 1
    Thanks Stephen & Dirk - I'm giving this one the thumbs up for the caes of one factor, but hopefully folks will read these comments for your suggestions on cleaning up an entire data frame of factors. – medriscoll Jul 30 '09 at 4:18
  • 6
    As a side-effect the function converts the data frame to a list, so the mydf <- droplevels(mydf) solution suggested by Roman Luštrik and Tommy O'Dell below is preferable. – Johan May 9 '14 at 10:41
  • What also might be noteworthy: rlm really goes wrong when your data.frame contains factors which contain levels with no data. You'll get an error: singular fits are not implemented in 'rlm' . Most of the time your matrix is not singular, it's just exactly this problem. – Matt Bannert Jun 19 '14 at 14:31

Since R version 2.12, there's a droplevels() function.

  • 7
    Alternatively, you can just scroll down a little bit... – Señor O Jan 30 '14 at 17:28
  • @RomanLuštrik Sadly sort by votes still makes the accepted answer #1, even though it (now) has fewer votes than yours :-( – tim Jun 28 '15 at 19:02
  • 3
    An advantage of this method over using factor() is that it's not necessary to modify the original dataframe or create a new persistent dataframe. I can wrap droplevels around a subsetted dataframe and use it as the data argument to a lattice function, and groups will be handled correctly. – Mars Nov 21 '15 at 5:44
  • I've noticed that if I have an NA level in my factor (a genuine NA level), it is dropped by dropped levels, even if the NAs are present. – Meep Jul 5 '16 at 0:48

If you don't want this behaviour, don't use factors, use character vectors instead. I think this makes more sense than patching things up afterwards. Try the following before loading your data with read.table or read.csv:

options(stringsAsFactors = FALSE)

The disadvantage is that you're restricted to alphabetical ordering. (reorder is your friend for plots)

  • 5
    You can also do read.csv(file='foo.csv', as.is=T). – andrewj Jul 29 '09 at 1:37
  • this is the best answer. Going for this solution, makes the most sense in my case! – TMS Jul 22 at 5:58

It is a known issue, and one possible remedy is provided by drop.levels() in the gdata package where your example becomes

> drop.levels(subdf)
  letters numbers
1       a       1
2       b       2
3       c       3
> levels(drop.levels(subdf)$letters)
[1] "a" "b" "c"

There is also the dropUnusedLevels function in the Hmisc package. However, it only works by altering the subset operator [ and is not applicable here.

As a corollary, a direct approach on a per-column basis is a simple as.factor(as.character(data)):

> levels(subdf$letters)
[1] "a" "b" "c" "d" "e"
> subdf$letters <- as.factor(as.character(subdf$letters))
> levels(subdf$letters)
[1] "a" "b" "c"
  • 4
    The reorder parameter of the drop.levels function is worth mentioning: if you have to preserve the original order of your factors, use it with FALSE value. – daroczig Jan 17 '11 at 11:31
  • Using gdata for just drop.levels yields "gdata: read.xls support for 'XLS' (Excel 97-2004) files ENABLED." "gdata: Unable to load perl libaries needed by read.xls()" "gdata: to support 'XLSX' (Excel 2007+) files." "gdata: Run the function 'installXLSXsupport()'" "gdata: to automatically download and install the perl". Use droplevels from baseR (stackoverflow.com/a/17218028/9295807) – Vrokipal Jun 20 at 19:12
  • Stuff happens over time. You are commenting on an answer I wrote nine years ago. So let's take this as a hint to generally prefer base R solutions as those are the ones using functionality that is still going to be around N years from now. – Dirk Eddelbuettel Jun 20 at 19:21

Another way of doing the same but with dplyr

subdf <- df %>% filter(numbers <= 3) %>% droplevels()


Also Works ! Thanks to agenis

subdf <- df %>% filter(numbers <= 3) %>% droplevels
  • 2
    you don't even need the parenthesis after droplevels – agenis Nov 24 '15 at 18:51

Here's another way, which I believe is equivalent to the factor(..) approach:

> df <- data.frame(let=letters[1:5], num=1:5)
> subdf <- df[df$num <= 3, ]

> subdf$let <- subdf$let[ , drop=TRUE]

> levels(subdf$let)
[1] "a" "b" "c"

This is obnoxious. This is how I usually do it, to avoid loading other packages:


which gets you:

> subdf$letters
[1] a b c
Levels: a b c

Note that the new levels will replace whatever occupies their index in the old levels(subdf$letters), so something like:


won't work.

This is obviously not ideal when you have lots of levels, but for a few, it's quick and easy.

here is a way of doing that

varFactor <- factor(letters[1:15])
varFactor <- varFactor[1:5]
varFactor <- varFactor[drop=T]

Looking at the droplevels methods code in the R source you can see it wraps to factor function. That means you can basically recreate the column with factor function.
Below the data.table way to drop levels from all the factor columns.

dt = data.table(letters=factor(letters[1:5]), numbers=seq(1:5))
#[1] "a" "b" "c" "d" "e"
subdt = dt[numbers <= 3]
#[1] "a" "b" "c" "d" "e"

upd.cols = sapply(subdt, is.factor)
subdt[, names(subdt)[upd.cols] := lapply(.SD, factor), .SDcols = upd.cols]
#[1] "a" "b" "c"
  • 1
    I think the data.table way would be something like for (j in names(DT)[sapply(DT, is.factor)]) set(DT, j = j, value = factor(DT[[j]])) – David Arenburg Jan 24 '16 at 13:24
  • 1
    @DavidArenburg it doesn't change much here as we call [.data.table only once – jangorecki Nov 30 '16 at 13:25

For the sake of completeness, now there is also fct_drop in the forcats package http://forcats.tidyverse.org/reference/fct_drop.html.

It differs from droplevels in the way it deals with NA:

f <- factor(c("a", "b", NA), exclude = NULL)

# [1] a    b    <NA>
# Levels: a b <NA>

# [1] a    b    <NA>
# Levels: a b

I wrote utility functions to do this. Now that I know about gdata's drop.levels, it looks pretty similar. Here they are (from here):

present_levels <- function(x) intersect(levels(x), x)

trim_levels <- function(...) UseMethod("trim_levels")

trim_levels.factor <- function(x)  factor(x, levels=present_levels(x))

trim_levels.data.frame <- function(x) {
  for (n in names(x))
    if (is.factor(x[,n]))
      x[,n] = trim_levels(x[,n])

Very interesting thread, I especially liked idea to just factor subselection again. I had the similar problem before and I just converted to character and then back to factor.

   df <- data.frame(letters=letters[1:5],numbers=seq(1:5))
   ## [1] "a" "b" "c" "d" "e"
   subdf <- df[df$numbers <= 3]

protected by Community Mar 17 '17 at 22:51

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