# How to get the first row of a dataframe with names when there is only one column? [duplicate]

I'm facing an unexpected behavior with base R.

I want to retrieve the first row of a dataframe with its colnames as a vector, and this common method works perfectly for most cases.

``````df = data.frame(A=c(12,13), B=c(24,25))
unlist(df[1,]) #class=numeric
#    A  B
#   12 24
``````

But when the dataframe is only composed of one column, the result is coerced to an unnamed vector:

``````df = data.frame(A=c(12,13))
unlist(df[1,]) #class=numeric too
# 12
``````

How to keep the name is the second case?

• `df[1,, drop = FALSE]` – Ronak Shah Nov 21 at 9:16
• @RonakShah Great, thanks! Could you please post it as an answer so I can accept it? This may be another question but this would not work with a matrix (as with the `t` function. Would you have any idea? – Dan Chaltiel Nov 21 at 9:28
• I am not sure what do you mean by this would not work with matrix ? – Ronak Shah Nov 21 at 9:42
• @RonakShah `df = t(data.frame(A=c(12,13)))` for instance – Dan Chaltiel Nov 21 at 10:45
• The above gives a matrix with rownames. So if you use `df[1, ,drop=FALSE]` it maintains the rownames. – Ronak Shah Nov 21 at 11:01

When extracting a dataframe using `[` by default `drop` argument is `TRUE`.

From `?Extract`

drop - If TRUE the result is coerced to the lowest possible dimension.

Also you can check the class for both the dataframe after extracting the row.

``````df1 = data.frame(A=c(12,13), B=c(24,25))
df2 = data.frame(A=c(12,13))

class(df1[1, ])
# "data.frame"
class(df2[1, ])
# "numeric"
``````

As we can see `df2` is coerced to a vector. Using `drop = FALSE` will keep it as dataframe and not drop the dimensions.

``````df2[1,, drop = FALSE]
#   A
#1 12

class(df[1,, drop = FALSE])
# "data.frame"
``````

If you want a named vector, then a single column data frame can be tricky to extract. A potential workaround can be,

``````do.call(c, df)
#A1
#12
``````

Where,

``````str(do.call(c, df))
Named num 12
- attr(*, "names")= chr "A1"
``````

Note that since it converts all the values to named vector, it adds a numeric suffix after the name so it does not have duplicated names

From `dplyr`

`?slice`

Choose rows by their ordinal position

``````
library(dplyr)
slice(df, 1L)

#   A
#1 12

str(slice(df, 1L))
# 'data.frame': 1 obs. of  1 variable:
#\$ A: num 12

``````

If you want it to be a named number, you can `unlist` it.

``````str(unlist(slice(df, 1L)))
#Named num 12
# - attr(*, "names")= chr "A"
``````

You can as well transpose it keeping column names.

``````colnames(t(unlist(slice(df, 1L))))

#"A"
``````
• `dplyr` FTW! My question was base R so I cannot accept this answer, but this feels much cleaner – Dan Chaltiel Nov 21 at 11:02
• This is just an alternative and for base r @Ronak's solution can be tailored `t(unlist(df[1,, drop = FALSE]))` to produce the same result when transposed. – deepseefan Nov 21 at 11:06

### It's R default behavior.

By default R will convert single column `data.frames` into `vectors` (with `drop = TRUE`). It's a good habit to use the option `drop = FALSE` when dealing with `data.frames`. This way you can be safe that data type will not change.

``````df[1,]
``````df[1, , drop = FALSE]