# Convert data.frame column to a vector?

I have a dataframe such as:

``````a1 = c(1, 2, 3, 4, 5)
a2 = c(6, 7, 8, 9, 10)
a3 = c(11, 12, 13, 14, 15)
aframe = data.frame(a1, a2, a3)
``````

I tried the following to convert one of the columns to a vector, but it doesn't work:

``````avector <- as.vector(aframe['a2'])
class(avector)
[1] "data.frame"
``````

This is the only solution I could come up with, but I'm assuming there has to be a better way to do this:

``````class(aframe['a2'])
[1] "data.frame"
avector = c()
for(atmp in aframe['a2']) { avector <- atmp }
class(avector)
[1] "numeric"
``````

Note: My vocabulary above may be off, so please correct me if so. I'm still learning the world of R. Additionally, any explanation of what's going on here is appreciated (i.e. relating to Python or some other language would help!)

• As you're seeing in the answers, a close reading of `?'[.data.frame'` will take you very far. – joran Aug 15 '11 at 20:34
• @joran: I think this is the first time I've ever encountered that particular help file. Thanks! Just prior to my plan to migrate to data.table. :) – Iterator Aug 15 '11 at 20:44

I'm going to attempt to explain this without making any mistakes, but I'm betting this will attract a clarification or two in the comments.

A data frame is a list. When you subset a data frame using the name of a column and `[`, what you're getting is a sublist (or a sub data frame). If you want the actual atomic column, you could use `[[`, or somewhat confusingly (to me) you could do `aframe[,2]` which returns a vector, not a sublist.

So try running this sequence and maybe things will be clearer:

``````avector <- as.vector(aframe['a2'])
class(avector)

avector <- aframe[['a2']]
class(avector)

avector <- aframe[,2]
class(avector)
``````
• +1 This is useful. I had gotten used to using `aframe[,"a2"]` because of the ability to use this with both data frames and matrices & seem to get the same results - a vector. – Iterator Aug 15 '11 at 20:39
• `[..., drop = F]` will always return a data frame – hadley Aug 16 '11 at 18:19
• This is particularly good to know because the `df\$x` syntax returns a vector. I used this syntax for a long time, but when I had to start using `df['name']` or `df[n]` to retrieve columns, I hit problems when I tried to send them to functions that expected vectors. Using `df[[n]]` or `df[['x']]` cleared things right up. – rensa Mar 18 '16 at 0:18
• Why does `as.vector` seem to silently have no effect? Shouldn't this either return a vector or conspicuously fail? – bli Aug 10 '16 at 7:05
• `aframe[['a2']]` is very useful with `sf` objects because `aframe[,"a2"]` will return two columns because the geometry column is included. – Matt May 24 '18 at 15:49

You could use `\$` extraction:

``````class(aframe\$a1)
[1] "numeric"
``````

or the double square bracket:

``````class(aframe[["a1"]])
[1] "numeric"
``````

You do not need `as.vector()`, but you do need correct indexing: `avector <- aframe[ , "a2"]`

The one other thing to be aware of is the `drop=FALSE` option to `[`:

``````R> aframe <- data.frame(a1=c1:5, a2=6:10, a3=11:15)
R> aframe
a1 a2 a3
1  1  6 11
2  2  7 12
3  3  8 13
4  4  9 14
5  5 10 15
R> avector <- aframe[, "a2"]
R> avector
[1]  6  7  8  9 10
R> avector <- aframe[, "a2", drop=FALSE]
R> avector
a2
1  6
2  7
3  8
4  9
5 10
R>
``````
• +1: The reminder of `drop=FALSE` is useful - this helps me in cases where I may select N columns from a data.frame, in those cases where N=1. – Iterator Aug 15 '11 at 20:42
• I use this when I can't foresee the number of columns selected and in case one column comes up, the result still gets passed as a data.frame with n columns. A vector may throw a monkey wrench into the functions down the line. – Roman Luštrik Aug 16 '11 at 8:51

There's now an easy way to do this using `dplyr`.

``````dplyr::pull(aframe, a2)
``````
• This is a good alternative to `[[` when making use of pipes. – qwr Dec 6 '18 at 23:20
• @qwr I agree! I'm a big fan of using pipes in my workflows. When I look back at my code months later, it's much easier to see what's happening. – Andrew Brēza Dec 7 '18 at 22:46

Another advantage of using the '[[' operator is that it works both with data.frame and data.table. So if the function has to be made running for both data.frame and data.table, and you want to extract a column from it as a vector then

``````data[["column_name"]]
``````

is best.

You can try something like this-

``````as.vector(unlist(aframe\$a2))
``````
• This is good if you want to compare two columns using `identical`. – p-robot Oct 10 '18 at 10:24

If you just use the extract operator it will work. By default, [] sets option `drop=TRUE`, which is what you want here. See `?'['` for more details.

``````>  a1 = c(1, 2, 3, 4, 5)
>  a2 = c(6, 7, 8, 9, 10)
>  a3 = c(11, 12, 13, 14, 15)
>  aframe = data.frame(a1, a2, a3)
> aframe[,'a2']
[1]  6  7  8  9 10
> class(aframe[,'a2'])
[1] "numeric"
``````
``````a1 = c(1, 2, 3, 4, 5)
a2 = c(6, 7, 8, 9, 10)
a3 = c(11, 12, 13, 14, 15)
aframe = data.frame(a1, a2, a3)
avector <- as.vector(aframe['a2'])

avector<-unlist(avector)
#this will return a vector of type "integer"
``````

I use lists to filter dataframes by whether or not they have a value %in% a list.

I had been manually creating lists by exporting a 1 column dataframe to Excel where I would add " ", around each element, before pasting into R: list <- c("el1", "el2", ...) which was usually followed by FilteredData <- subset(Data, Column %in% list).

After searching stackoverflow and not finding an intuitive way to convert a 1 column dataframe into a list, I am now posting my first ever stackoverflow contribution:

``````# assuming you have a 1 column dataframe called "df"
list <- c()
for(i in 1:nrow(df)){
list <- append(list, df[i,1])
}
View(list)
# This list is not a dataframe, it is a list of values
# You can filter a dataframe using "subset([Data], [Column] %in% list")
``````