17

I fear greatly that this has been asked and will be downvoted, but I have not found the answer in the docs (?"["), and discovered that it is hard to search for.

data(wines)
# This is allowed:
alcoholic <- wines[, 1]
alcoholic <- wines[, "alcohol"]
nonalcoholic <- wines[, -1]
# But this is not:
fail <- wines[, -"alcohol"]

I know of two solutions, but am frustrated for need of them.

win <- wines[, !colnames(wines) %in% "alcohol"]  # snappy
win <- wines[, -which(colnames(wines) %in% "alcohol")]  # snappier!
12
  • 2
    Is snappy and snappier positive or negative measures? I prefer setdiff in these cases. What do you expect -"alcohol" to return? It doesn't work as a command by itself, so why would it work when trying to subset? Sep 5 '13 at 10:50
  • 1
    Maybe not an answer to your "Why" in terms on "why has someone chosen to implement it this way", but anyway: from ?[: "For [-indexing only: i, j, ... can be logical vectors (your ! alternative) [...] can also be negative integers (your which alternative).
    – Henrik
    Sep 5 '13 at 10:57
  • 1
    if you're just looking for something shorter: wines[names(wines)!="alcohol"]
    – plannapus
    Sep 5 '13 at 11:00
  • 3
    subset(airquality, select = -Temp)
    – Henrik
    Sep 5 '13 at 11:27
  • 1
    Where does the wines data set come from? I get 'not found' (R 2.15, so maybe its new).
    – Spacedman
    Sep 5 '13 at 13:37
18

When you do

wines[, -1]

-1 is evaluated before it is used by [. As you know, the - unary operator won't work with object of class character, so doing the same with "alcohol" will lead you to:

Error in -"alcohol" : invalid argument to unary operator

You can add the following to your alternatives:

wines[, -match("alcohol", colnames(wines))]
wines[, setdiff(colnames(wines), "alcohol")]

but you should know about the risks of negative indexing, e.g., see what happens if you mistype "alcool" (sic.) So your first suggestion and the last one here (@Ananda's) should be preferred. You might also want to write a function that will error out if you provide a name that is not part of your data.

6
  • R> -1 gives [1] -1, so how does that work? I am not so familiar with the way R works. Is that what you mean? Sep 5 '13 at 11:05
  • I'll have to write a compendium of idioms for deleting a column, thanks for the additions :) Sep 5 '13 at 11:07
  • Yes, -1 is something that evaluates fine, so you can pass it as an argument to the [ function and it will know what to do with it. On the other side, -"alcohol" does not. It has less to do with how [ is implemented, more with the fact that you cannot compute -"alcohol", hence pass it to [ or any function.
    – flodel
    Sep 5 '13 at 11:10
  • I normally answer these types of questions with -which() is evil, and then point the way to setdiff. +1 Sep 5 '13 at 11:16
  • 1
    For real fun, compare foo[-0] and foo[-c(0,1)] . IIRC flodel discussed zeroes in a SO question a few months back. Sep 5 '13 at 11:29
8

Another possibility:

subset(wines,select=-alcohol)

You can even do

subset(wines,select=-c(alcohol,other_drop))

In fact, if you have a contiguous set of columns you want to drop, you can even

subset(wines,select=-(first_drop:last_drop))

which can be handy (although IMO it depends dangerously on the order of columns, which is something that might be fragile: I might prefer a grep-based solution if there were some way to identify columns, or a more explicit separate definition of column groups).

In this case subset is using non-standard evaluation, which as has been discussed elsewhere can be dangerous in some contexts. But I still like it for simple, top-level data manipulation because of its readability.

2
  • 1
    The subset function converts the select expression to numbers via a named vector of numbers, which is why the ":" method works.
    – IRTFM
    Sep 5 '13 at 17:30
  • 1
    @DWin, ?subset says This is a convenience function intended for use interactively. For programming it is better to use the standard subsetting functions like [, and in particular the non-standard evaluation of argument subset can have unanticipated consequences. Why? What are the non-standard evaluations it refers to. These ones Ben Bolker has listed? Sep 6 '13 at 0:26
6

Another method that uses numeric indexing and generalizes to situations where you wnat to remove a bunch of similarly named columns:

dfrm[ , -grep("^val", names(dfrm) )] #remove columns starting with "val"

(I gave my vote to flodel, since his answer described "why" a "minus sign" didn't work. Essentially because the R authors didn't overload the "-" operator for that purpose. They also didn't overload "+" to do concatenation in the manner that some languages did.

3
  • So they could be overloaded if the devs so chose? Sep 5 '13 at 11:19
  • @adifferentben Or you could overload the ops yourself if you dare :-). Sep 5 '13 at 11:27
  • The authors of the lattice and ggplot2 plotting systems have overloaded the "+" operator, so there are no fundamental barriers to overloading "-".
    – IRTFM
    Sep 5 '13 at 17:08
3

How about write a simple little function and stick it in your .Rprofile. Something like...

dropcols <- function( df , cols ){
  out <- df[ , !names(df) %in% cols]
  return( out )
}

#  To use it....
data( mtcars )
head( dropcols( mtcars , "mpg" ) )
#                  cyl disp  hp drat    wt  qsec vs am gear carb
#Mazda RX4           6  160 110 3.90 2.620 16.46  0  1    4    4
#Mazda RX4 Wag       6  160 110 3.90 2.875 17.02  0  1    4    4
#Datsun 710          4  108  93 3.85 2.320 18.61  1  1    4    1
#Hornet 4 Drive      6  258 110 3.08 3.215 19.44  1  0    3    1
#Hornet Sportabout   8  360 175 3.15 3.440 17.02  0  0    3    2
#Valiant             6  225 105 2.76 3.460 20.22  1  0    3    1
1
  • Yep, that's a useful way to solve it. Not very portable however for others so I'm a little disinclined to do it. I've avoided that sort of thing in general partly for that reason, but also I always forget to sync my work to home machine to laptop, etc, and forget what's in my .Rprofile anyway! Sep 5 '13 at 11:02
3

I can't find this in the documentation, but the following syntax works with data.table:

dt = data.table(wines)

dt[, !"alcohol", with = F]

And you can also have a list of columns if you like:

dt[, !c("Country", "alcohol"), with = F]

It was just documented in NEWS for v1.8.4 it seems :

When with=FALSE, "!" may also be a prefix on j, #1384ii. This selects all but the named columns.

DF[,-match("somecol",names(DF))]
# works when somecol exists. If not, NA causes an error.

DF[,-match("somecol",names(DF),nomatch=0)]
# works when somecol exists. Empty data.frame when it doesn't, silently.

DT[,-match("somecol",names(DT)),with=FALSE]
# same issues.

DT[,setdiff(names(DT),"somecol"),with=FALSE]
# works but you have to know order of arguments, and no warning if missing

vs

DT[,!"somecol",with=FALSE]
# works and easy to read. With (helpful) warning if somecol isn't there.

But the above all copy every column other than the deleted one. More usually :

DT[,somecol:=NULL]

to delete the column by name by reference.

0

You can get your desired behavior as follows:

data(iris)
str(iris)
delete <- which(colnames(iris) == "Species")
iris2 <- iris[, -delete]
str(iris2)
2
  • This is equivalent to matching a single string, as opposed to using %in% to match a list of strings. Sep 5 '13 at 11:25
  • This could be simpliefied to deleted <- colnames(iris) == "Species"; iris[!deleted]. You don't need negative indexing when you got logical vector.
    – Marek
    Mar 19 '14 at 6:26

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