How to convert a factor to an integer\numeric without a loss of information?

When I convert a factor to a numeric or integer, I get the underlying level codes, not the values as numbers.

``````f <- factor(sample(runif(5), 20, replace = TRUE))
##  [1] 0.0248644019011408 0.0248644019011408 0.179684827337041
##  [4] 0.0284090070053935 0.363644931698218  0.363644931698218
##  [7] 0.179684827337041  0.249704354675487  0.249704354675487
## [10] 0.0248644019011408 0.249704354675487  0.0284090070053935
## [13] 0.179684827337041  0.0248644019011408 0.179684827337041
## [16] 0.363644931698218  0.249704354675487  0.363644931698218
## [19] 0.179684827337041  0.0284090070053935
## 5 Levels: 0.0248644019011408 0.0284090070053935 ... 0.363644931698218

as.numeric(f)
##  [1] 1 1 3 2 5 5 3 4 4 1 4 2 3 1 3 5 4 5 3 2

as.integer(f)
##  [1] 1 1 3 2 5 5 3 4 4 1 4 2 3 1 3 5 4 5 3 2
``````

I have to resort to `paste` to get the real values.

``````as.numeric(paste(f))
##  [1] 0.02486440 0.02486440 0.17968483 0.02840901 0.36364493 0.36364493
##  [7] 0.17968483 0.24970435 0.24970435 0.02486440 0.24970435 0.02840901
## [13] 0.17968483 0.02486440 0.17968483 0.36364493 0.24970435 0.36364493
## [19] 0.17968483 0.02840901
``````

Is there a better way to convert a factor to numeric?

-

See the Warning section of `?factor`:

In particular, `as.numeric` applied to a factor is meaningless, and may happen by implicit coercion. To transform a factor `f` to approximately its original numeric values, `as.numeric(levels(f))[f]` is recommended and slightly more efficient than `as.numeric(as.character(f))`.

The FAQ on R has similar advice.

Why is `as.numeric(levels(f))[f]` more efficent than `as.numeric(as.character(f))`?

`as.numeric(as.character(f))` is effectively `as.numeric(levels(f)[f])`, so you are performing the conversion to numeric on `length(x)` values, rather than on `nlevels(x)` values. The speed difference will be most apparent for long vectors with few levels. If the values are mostly unique, there won't be much difference in speed. however you do the conversion, this is operation is unliekly to be the bottleneck in your code, so don't worry too much about it.

Some timings

``````library(microbenchmark)
microbenchmark(
as.numeric(levels(f))[f],
as.numeric(levels(f)[f]),
as.numeric(as.character(f)),
paste0(x),
paste(x),
times = 1e5
)
## Unit: microseconds
##                         expr   min    lq      mean median     uq      max neval
##     as.numeric(levels(f))[f] 3.982 5.120  6.088624  5.405  5.974 1981.418 1e+05
##     as.numeric(levels(f)[f]) 5.973 7.111  8.352032  7.396  8.250 4256.380 1e+05
##  as.numeric(as.character(f)) 6.827 8.249  9.628264  8.534  9.671 1983.694 1e+05
##                    paste0(x) 7.964 9.387 11.026351  9.956 10.810 2911.257 1e+05
##                     paste(x) 7.965 9.387 11.127308  9.956 11.093 2419.458 1e+05
``````
-
For timings see this answer: stackoverflow.com/questions/6979625/… –  Ari B. Friedman Aug 8 '11 at 11:27
Many thanks for your solution. Can I ask why the as.numeric(levels(f))[f] is more precise and faster? Thanks. –  Sam Apr 18 '14 at 0:25
@Sam as.character(f) requires a "primitive lookup" to find the function as.character.factor(), which is defined as as.numeric(levels(f))[f]. –  Jonathan Jun 27 '14 at 19:12

R has a number of (undocumented) convenience functions for converting factors:

• `as.character.factor`
• `as.data.frame.factor`
• `as.Date.factor`
• `as.list.factor`
• `as.vector.factor`
• ...

But annoyingly, there is nothing to handle the factor -> numeric conversion. As an extension of Joshua Ulrich's answer, I would suggest to overcome this omission with the definition of your own idiomatic function:

``````as.numeric.factor <- function(x) {as.numeric(levels(x))[x]}
``````

that you can store at the beginning of your script, or even better in your `.Rprofile` file.

-
There's nothing to handle the factor-to-integer (or numeric) conversion because it's expected that `as.integer(factor)` returns the underlying integer codes (as shown in the examples section of `?factor`). It's probably okay to define this function in your global environment, but you might cause problems if you actually register it as an S3 method. –  Joshua Ulrich Apr 18 '14 at 12:03
That's a good point and I agree: a complete redefinition of the factor->numeric conversion is likely to mess a lot of things. I found myself writing the cumbersome `factor->numeric` conversion a lot before realizing that it is in fact a shortcoming of R: some convenience function should be available... Calling it `as.numeric.factor` makes sense to me, but YMMV. –  Jealie Apr 18 '14 at 20:11
If you find yourself doing that a lot, then you should do something upstream to avoid it all-together. –  Joshua Ulrich Apr 18 '14 at 22:44
as.numeric.factor returns NA? –  jO. Aug 8 '14 at 7:56
@jO.: in the cases where you used something like `v=NA;as.numeric.factor(v)` or `v='something';as.numeric.factor(v)`, then it should, otherwise you have a weird thing going on somewhere. –  Jealie Aug 8 '14 at 14:43

I was unable to get the solution by Joshua Ulrich to work correctly. Instead of returning numeric/integer values `as.numeric(levels(x))` returns `NA` values.

Reproducible example:

``````> set.seed(1)
> x <- sample(x = letters, size = 100, replace = TRUE)
> x <- factor(x)
> str(x)
Factor w/ 26 levels "a","b","c","d",..: 7 10 15 24 6 24 25 18 17 2 ...
> as.numeric(levels(x))
[1] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
Warning message:
NAs introduced by coercion
> sessionInfo()
R version 3.1.2 (2014-10-31)
Platform: x86_64-apple-darwin13.4.0 (64-bit)

locale:
[1] en_US.UTF-8/en_US.UTF-8/en_US.UTF-8/C/en_US.UTF-8/en_US.UTF-8

attached base packages:
[1] stats     graphics  grDevices utils     datasets  methods   base

loaded via a namespace (and not attached):
[1] tools_3.1.2
>
``````

The solution I came up with is to use `seq_along` instead of `as.numeric`.

``````as.numeric.factor <- function(x) {seq_along(levels(x))[x]}
``````
-
This question is about converting factors to numeric where the levels are already representations of numbers, e.g. `factor(c(2.3, 4.6, 9))`, or perhaps more commonly `factor(1999:2015)`. If you factor levels aren't representations of a numeric, then `as.numeric(your_factor)` should work just fine, no extra work required. –  Gregor Jan 29 at 20:04

Another possible way to convert factor-type numberic columns to numeric-type columns:

%mydata is the data file with factor columns

write.csv(mydata,"mydata.csv")

% now the factor data columns become numeric mydata=read.csv("mydata.csv")

-
While technically this would work, it offers nothing but disadvantages compared to other approaches. It will be much slower, it will leave an unnecessary file behind, it may inadvertently convert character columns to factors and lose other column classes if present (e.g., dates), and due to the default `row.names = TRUE` in `write.csv` you might end up with an additional column of data. –  Gregor May 8 at 16:45

protected by Joshua UlrichJul 9 '13 at 13:53

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