This is the glimpse() of my dataframe DF:

Observations: 221184
$ Epsilon    (fctr) 96002.txt, 96002.txt, 96004.txt, 96004.txt, 96005.txt, 960...
$ Value   (int) 61914, 61887, 61680, 61649, 61776, 61800, 61753, 61725, 616...

I want to filter (remove) all the observations with the first two levels of Epsilon using dplyr.

I mean:

DF %>% filter(Epsilon != "96002.txt" & Epsilon != "96004.txt")

However, I don't want to use the string values (i.e., "96002.txt" and "96004.txt") but the level orders (i.e., 1 and 2), because it should be a general instruction independent of the level values.

  • 1
    Is filter(as.numeric(Epsilon)>2) what you are looking for?
    – nicola
    May 5, 2015 at 11:46
  • @nicola Great, it is! Please rewrite it as an answer (not a comment) and I will accept it. May 5, 2015 at 11:49
  • 1
    As commented by nicola, you can convert factors to their numeric/integer representation just by applying as.numeric or as.integer on them (which often causes confusion when it's not inteded).
    – talat
    May 5, 2015 at 11:50

1 Answer 1


You can easily convert a factor into an integer and then use conditions on it. Just replace your filter statement with:


More generally, if you have a vector of indices level you want to eliminate, you can try:

 #some random levels we don't want
 #just the filter part
 filter(!as.integer(Epsilon) %in% nonWantedLevels)
  • 1
    Is as.integer() better/safer than as.numeric here? Dec 7, 2019 at 11:02
  • 4
    Very slightly more efficient, since a factor is internally an integer and numeric coerces to a float value.
    – nicola
    Dec 9, 2019 at 11:39

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.