# How to convert a data frame column to numeric type?

How do you convert a data frame column to a numeric type?

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Since (still) nobody got check-mark, I assume that you have some practical issue in mind, mostly because you haven't specified what type of vector you want to convert to `numeric`. I suggest that you should apply `transform` function in order to complete your task.

Now I'm about to demonstrate certain "conversion anomaly":

``````# create dummy data.frame
d <- data.frame(char = letters[1:5],
fake_char = as.character(1:5),
fac = factor(1:5),
char_fac = factor(letters[1:5]),
num = 1:5, stringsAsFactors = FALSE)
``````

Let us have a glance at `data.frame`

``````> d
char fake_char fac char_fac num
1    a         1   1        a   1
2    b         2   2        b   2
3    c         3   3        c   3
4    d         4   4        d   4
5    e         5   5        e   5
``````

and let us run:

``````> sapply(d, mode)
char   fake_char         fac    char_fac         num
"character" "character"   "numeric"   "numeric"   "numeric"
> sapply(d, class)
char   fake_char         fac    char_fac         num
"character" "character"    "factor"    "factor"   "integer"
``````

Now you probably ask yourself "Where's an anomaly?" Well, I've bumped into quite peculiar things in R, and this is not the most confounding thing, but it can confuse you, especially if you read this before rolling into bed.

Here goes: first two columns are `character`. I've deliberately called 2nd one `fake_char`. Spot the similarity of this `character` variable with one that Dirk created in his reply. It's actually a `numerical` vector converted to `character`. 3rd and 4th column are `factor`, and the last one is "purely" `numeric`.

If you utilize `transform` function, you can convert the `fake_char` into `numeric`, but not the `char` variable itself.

``````> transform(d, char = as.numeric(char))
char fake_char fac char_fac num
1   NA         1   1        a   1
2   NA         2   2        b   2
3   NA         3   3        c   3
4   NA         4   4        d   4
5   NA         5   5        e   5
Warning message:
In eval(expr, envir, enclos) : NAs introduced by coercion
``````

but if you do same thing on `fake_char` and `char_fac`, you'll be lucky, and get away with no NA's:

``````> transform(d, fake_char = as.numeric(fake_char),
char_fac = as.numeric(char_fac))

char fake_char fac char_fac num
1    a         1   1        1   1
2    b         2   2        2   2
3    c         3   3        3   3
4    d         4   4        4   4
5    e         5   5        5   5
``````

If you save transformed `data.frame` and check for `mode` and `class`, you'll get:

``````> D <- transform(d, fake_char = as.numeric(fake_char),
char_fac = as.numeric(char_fac))

> sapply(D, mode)
char   fake_char         fac    char_fac         num
"character"   "numeric"   "numeric"   "numeric"   "numeric"
> sapply(D, class)
char   fake_char         fac    char_fac         num
"character"   "numeric"    "factor"   "numeric"   "integer"
``````

So, the conclusion is: Yes, you can convert `character` vector into a `numeric` one, but only if it's elements are "convertible" to `numeric`. If there's just one `character` element in vector, you'll get error when trying to convert that vector to `numerical` one.

And just to prove my point:

``````> err <- c(1, "b", 3, 4, "e")
> mode(err)
[1] "character"
> class(err)
[1] "character"
> char <- as.numeric(err)
Warning message:
NAs introduced by coercion
> char
[1]  1 NA  3  4 NA
``````

And now, just for fun (or practice), try to guess the output of these commands:

``````> fac <- as.factor(err)
> fac
???
> num <- as.numeric(fac)
> num
???
``````

Kind regards to Patrick Burns! =)

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+1 very nice explanation. Added a check for numerics in character strings as supplementing answer. –  Matt Bannert Oct 24 at 8:53

Something that has helped me: if you have ranges of variables to convert (or just more then one), you can use `sapply`.

A bit nonsensical but just for example:

``````data(cars)
cars[, 1:2] <- sapply(cars[, 1:2], as.factor)
``````

Say columns 3, 6-15 and 37 of you dataframe need to be converted to numeric one could:

``````dat[, c(3,6:15,37)] <- sapply(dat[, c(3,6:15,37)], as.numeric)
``````
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if `x` is the column name of dataframe `dat`, and `x` is of type factor, use:

``````as.numeric(as.character(dat\$x))
``````
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Tim is correct, and Shane has an omission. Here are additional examples:

``````R> df <- data.frame(a = as.character(10:15))
R> df <- data.frame(df, num = as.numeric(df\$a),
numchr = as.numeric(as.character(df\$a)))
R> df
a num numchr
1 10   1     10
2 11   2     11
3 12   3     12
4 13   4     13
5 14   5     14
6 15   6     15
R> summary(df)
a          num           numchr
10:1   Min.   :1.00   Min.   :10.0
11:1   1st Qu.:2.25   1st Qu.:11.2
12:1   Median :3.50   Median :12.5
13:1   Mean   :3.50   Mean   :12.5
14:1   3rd Qu.:4.75   3rd Qu.:13.8
15:1   Max.   :6.00   Max.   :15.0
R>
``````

Our `data.frame` now has a summary of the factor column (counts) and numeric summaries of the `as.numeric()` --- which is wrong as it got the numeric factor levels --- and the (correct) summary of the `as.numeric(as.character())`.

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+1 Thanks for pointing that out. I removed it. –  Shane Feb 18 '10 at 14:47
My pleasure. This is one of the more silly corners of the language, and I think it featured in the older 'R Gotchas' question here. –  Dirk Eddelbuettel Feb 18 '10 at 14:52

With the following code you can convert all data frame columns to numeric:

``````as.data.frame(lapply(X,as.numeric))
``````

and for converting whole matrix into numeric you have two ways: Either:

``````mode(X) <- "numeric"
``````

or:

``````X <- apply(X, 2, as.numeric)
``````
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None of the answers here particularly worked for me.

I ended up doing the following:

-store the names of all the variables you want to change in a character vector

-apply the type changes in a for loop

``````tonumeric<-c("x1","x2","x3",...,"xn")
for (x in tonumeric){
dt[[x]]<-as.numeric(dt[[x]])
}
``````

I think the problem with Jay's approach is that it leverages that you know the column numbers. I can't particularly be arsed to figure out the column numbers of 20 or so variables in a data table with 100+ variables, so that approach is moot. If you try passing a character vector, it tries to coerce the names of the variables to numbers and yields only NAs, which screws up the whole process.

EDIT: IMPROVED TO REMOVE LOOP

The following accomplishes the same, and uses some key advantages of data.table

``````dt[,tonumeric]<-opa_data_14[,lapply(.SD,as.numeric),.SDcols=tonumeric]
``````

PS I'm just noticing that this question was posed for data frames, but I assume everyone has converted to using the data.table package by now. The loop solution should work for data frames as well, but this version ran much faster for me.

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Though others have covered the topic pretty well, I'd like to add this additional quick thought/hint. You could use regexp to check in advance whether characters potentially consist only of numerics.

``````for(i in seq_along(names(df)){
potential_numcol[i] <- all(!grepl("[a-zA-Z]",d[,i]))
}
# and now just convert only the numeric ones
d <- sapply(d[,potential_numcol],as.numeric)
``````

For more sophisticated regular expressions and a neat why to learn/experience their power see this really nice website: http://regexr.com/

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