131

Suppose, you have a data.frame like this:

x <- data.frame(v1=1:20,v2=1:20,v3=1:20,v4=letters[1:20])

How would you select only those columns in x that are numeric?

226

EDIT: updated to avoid use of ill-advised sapply.

Since a data frame is a list we can use the list-apply functions:

nums <- unlist(lapply(x, is.numeric))  

Then standard subsetting

x[ , nums]

## don't use sapply, even though it's less code
## nums <- sapply(x, is.numeric)

For a more idiomatic modern R I'd now recommend

x[ , purrr::map_lgl(x, is.numeric)]

Less codey, less reflecting R's particular quirks, and more straightforward, and robust to use on database-back-ended tibbles:

dplyr::select_if(x, is.numeric)
  • 9
    Thanks, I found that one just as you posted it x[,sapply(x,is.numeric)] – Brandon Bertelsen May 2 '11 at 22:31
  • 7
    x[nums] or x[sapply(x,is.numeric)] works as well. And they always return data.frame. Compare x[1] vs x[,1] - first is data.frame, second is a vector. If one want to prevent conversion then must use x[, 1, drop=FALSE] . – Marek May 3 '11 at 11:46
  • does "!is.numeric" work? – PatrickT Nov 29 '13 at 10:17
  • 2
    sorry, got it: !sapply(x, is.numeric) – PatrickT Nov 29 '13 at 10:19
  • 1
    @YohanObadia You can use a tryCatch() to deal with this. Please consider opening a new question. – Brandon Bertelsen Sep 2 '16 at 23:39
53

The dplyr package's select_if() function is an elegant solution:

library("dplyr")
select_if(x, is.numeric)
  • This was my go to solution, but it looks like select_if() has now been depreciated. – ApeWithPants Jan 3 '18 at 18:23
  • 1
    select_if() still appears in the current functions reference at dplyr.tidyverse.org/reference/index.html . You may be thinking of select_() being deprecated. – Sharon Nov 16 '18 at 12:52
17

Filter() from the base package is the perfect function for that use-case: You simply have to code:

Filter(is.numeric, x)

It is also much faster than select_if():

library(microbenchmark)
microbenchmark(
    dplyr::select_if(mtcars, is.numeric),
    Filter(is.numeric, mtcars)
)

returns (on my computer) a median of 60 microseconds for Filter, and 21 000 microseconds for dplyr (350x faster).

  • This solution doesn't fail when no numeric columns are present. Are there any drawbacks to using it? – bli Nov 22 '16 at 10:10
  • Filter only applies to rows of a dataframe rather than columns. As such, this solution wouldn't give the correct result. – Michael Jan 18 '17 at 11:45
  • @Michael don't confuse Filter from the base package and filter from dplyr package! – Kevin Zarca Feb 1 '17 at 14:45
  • @bli I can't see any drawback of using Filter. Its input is a data.frame object and it return a data.frame – Kevin Zarca Feb 1 '17 at 14:47
3

This an alternate code to other answers:

x[, sapply(x, class) == "numeric"]

with a data.table

x[, lapply(x, is.numeric) == TRUE, with = FALSE]
  • Where does training come from? Shouldn't that read x as well? – Uwe Nov 13 '16 at 16:16
  • Ok copy and paste and not check problem – Enrique Pérez Herrero Nov 13 '16 at 16:22
  • 3
    This is more of a comment to the selected answer, rather than aunique answer. – Brandon Bertelsen Nov 13 '16 at 17:55
  • 2
    Columns can have more than one class. – Rich Scriven Nov 13 '16 at 19:56
3

in case you are interested only in column names then use this :

names(dplyr::select_if(train,is.numeric))
2

If you have many factor variables, you can use select_if funtion. install the dplyr packages. There are many function that separates data by satisfying a condition. you can set the conditions.

Use like this.

categorical<-select_if(df,is.factor)
str(categorical)
2

The library PCAmixdata has functon splitmix that splits quantitative(Numerical data) and qualitative (Categorical data) of a given dataframe "YourDataframe" as shown below:

install.packages("PCAmixdata")
library(PCAmixdata)
split <- splitmix(YourDataframe)
X1 <- split$X.quanti(Gives numerical columns in the dataset) 
X2 <- split$X.quali (Gives categorical columns in the dataset)
1

Another way could be as follows:-

#extracting numeric columns from iris datset
(iris[sapply(iris, is.numeric)])
  • Hi Ayushi, this probably was downvoted because it's a repeat of the first answer, but this method has some issues that were identified. Take a look at the comments in the first answer, you'll see what I mean. – Brandon Bertelsen Oct 9 '18 at 18:25
0

This doesn't directly answer the question but can be very useful, especially if you want something like all the numeric columns except for your id column and dependent variable.

numeric_cols <- sapply(dataframe, is.numeric) %>% which %>% 
                   names %>% setdiff(., c("id_variable", "dep_var"))

dataframe %<>% dplyr::mutate_at(numeric_cols, function(x) your_function(x))

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