I do I remove all rows in a dataframe where a certain row meets a string match criteria?

For example:


How would I return a dataframe that excludes all rows where C = Foo:


6 Answers 6


Just use the == with the negation symbol (!). If dtfm is the name of your data.frame:

dtfm[!dtfm$C == "Foo", ]

Or, to move the negation in the comparison:

dtfm[dtfm$C != "Foo", ]

Or, even shorter using subset():

subset(dtfm, C!="Foo")
  • 4
    Or just dftm[dtfm$C != "Foo", ] which is the same but slightly more easier to read. Jul 11, 2011 at 13:19
  • 6
    .. or subset(dftm, C!="Foo")
    – Karsten W.
    Jul 11, 2011 at 14:01
  • 1
    How would you do this with an arbitrary number of conditions? Like if you wanted to remove all rows where "C = Foo" or "C = Bar"?
    – Zelbinian
    Mar 5, 2013 at 15:11
  • 5
    That would be another question. But the key is to use %in% and !. In your example !(C %in% c("Foo", "Bar")) Mar 5, 2013 at 16:55
  • 1
    All good feedback. To complete Luciano's suggestion for the non-subset() example, I found that this worked to trim out undesired rows: dtfm <- dtfm[!(dtfm$C %in% c("Foo", "Bar")),] Just be sure not to forget the trailing comma in the [] brackets. Feb 18, 2014 at 21:11

You can use the dplyr package to easily remove those particular rows.

df <- filter(df, C != "Foo")

I had a column(A) in a data frame with 3 values in it (yes, no, unknown). I wanted to filter only those rows which had a value "yes" for which this is the code, hope this will help you guys as well --

df <- df [(!(df$A=="no") & !(df$A=="unknown")),]

if you wish to using dplyr, for to remove row "Foo":

df %>%

I know this has been answered but here is another option:

library (dplyr)
df %>% filter(!c=="foo)
df[!df$c=="foo", ]
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    – Community Bot
    Jan 2, 2022 at 8:28

If your exclusion conditions are stored in another data frame you could use rows_delete:


removal_df <- data.frame(C = "Foo")

df %>% 
  rows_delete(removal_df, by = "C")

  A B   C
1 2 3 Bar
2 7 5 Zap

This is also handy if you have multiple exclusion conditions so you do not have to write out a long filter statement.

Note: rows_delete is only available if you have dplyr >= 1.0.0

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