12

I want to find rows in a dataframe that do not match a pattern.

 Key = c(1,2,3,4,5)
 Code = c("X348","I605","B777","I609","F123")
 df1 <- data.frame(Key, Code)

I can find items beginning with I60 using:

 df2 <- subset (df1, grepl("^I60", df1$Code))

But I want to be able to find all the other rows (that is, those NOT beginning with I60). The invert argument does not work with grepl. grep on its own does not find all rows, nor can it pass the results to the subset command. Grateful for help.

  • 2
    subset(df1, !grepl("^I60", Code)) – akrun Jan 22 '15 at 10:10
  • 6
    Not sure what you mean that grep doesn't work. df1[grep("^I60", df1$Code, invert = TRUE), ] or df1[-grep("^I60", df1$Code), ] seems to work fine. I also never understood why would someone use subset. It is always reminds me this strange urge people have to use plyr for some reason. – David Arenburg Jan 22 '15 at 10:12
  • Fair point, just (bad) habit, but I'm new to R. Thanks for your comments, appreciated. – Stewart Wiseman Jan 22 '15 at 10:38
16

You could use the [ operator and do

df1[!grepl("I60", Code),]

(Suggested clarification from @Hugh:) Another way would be

df1[!grepl("I60",df1$Code),]

Here is the reference manual on array indexing, which is done with [:

http://cran.r-project.org/doc/manuals/R-intro.html#Array-indexing

  • 1
    +1 though note that ,Code is only valid because the variable was created independent of the data frame. (If Code wasn't an object in the environment, but was simply a column name, this code wouldn't work -- though only a tiny modification would be required.) – Hugh Jan 22 '15 at 11:54
  • Like @Hugh said, this wouldn't work for the real data set, not to mentions that both the answers here were already provided in the comments long ago. – David Arenburg Jan 22 '15 at 11:59
  • Yes, thanks for simplifying. I must use the [ operator more! – Stewart Wiseman Jan 22 '15 at 12:06
3

Also, you can try this:

 Key = c(1,2,3,4,5)
Code = c("X348","I605","B777","I609","F123")
df1 <- data.frame(Key, Code)
toRemove<-grep("^I60", df1$Code)
df2 <- df1[-toRemove,]
  • 2
    JFY, using which(grepl) is the same as just using grep – David Arenburg Jan 22 '15 at 11:52
  • 1
    This answer gives the correct answer but should not be accepted because it is unnecessarily complicated. – Hugh Jan 22 '15 at 11:53

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