# Automatically expanding an R factor into a collection of 1/0 indicator variables for every factor level

I have an R data frame containing a factor that I want to "expand" so that for each factor level, there is an associated column in a new data frame, which contains a 1/0 indicator. E.g., suppose I have:

``````df.original <-data.frame(eggs = c("foo", "foo", "bar", "bar"), ham = c(1,2,3,4))
``````

I want:

``````df.desired  <- data.frame(foo = c(1,1,0,0), bar=c(0,0,1,1), ham=c(1,2,3,4))
``````

Because for certain analyses for which you need to have a completely numeric data frame (e.g., principal component analysis), I thought this feature might be built in. Writing a function to do this shouldn't be too hard, but I can foresee some challenges relating to column names and if something exists already, I'd rather use that.

Use the `model.matrix` function:

``````model.matrix( ~ Species - 1, data=iris )
``````
• Can I just add that this method was so much faster than using `cast` for me. Dec 8, 2013 at 15:03
• @GregSnow I reviewed the 2nd paragraph of `?formula` as well as `?model.matrix`, but it was unclear (could just be my lack of depth of knowledge in matrix algebra and model formulation). After digging more, I've been able to gather that the -1 is just specifying not to include the "intercept" column. If you leave out the -1, you'll see an intercept column of 1's in the output with one binary column left out. You're able to see which values the omitted column are 1's based on rows where the values of the other columns are 0's. The documentation seems cryptic -is there another good resource? Oct 5, 2015 at 22:25
• @RyanChase, there are many online tutorials and books about R/S (several that have brief descriptions on the r-project.org webpage). My own learning of S and R has been rather eclectic (and long), so I am not the best to give an opinion on how current books/tutorials appeal to beginners. I am, however, a fan of experimentation. Trying something out in a fresh R session can be very enlightening and not dangerous (the worst that has happened to me is crashing R, and that rarely, which lead to improvements in R). Stackoverflow is then a good resource for understanding what happened. Oct 6, 2015 at 16:15
• And if you want to convert all factor columns, you can use: `model.matrix(~., data=iris)[,-1]` Jan 5, 2016 at 0:32
• @colin, Not fully automatic, but you can use `naresid` to put the missing values back in after using `na.exclude`. A quick example: `tmp <- data.frame(x=factor(c('a','b','c',NA,'a'))); tmp2 <- na.exclude(tmp); tmp3 <- model.matrix( ~x-1, tmp2); tmp4 <- naresid(attr(tmp2,'na.action'), tmp3)` Dec 18, 2018 at 18:57

If your data frame is only made of factors (or you are working on a subset of variables which are all factors), you can also use the `acm.disjonctif` function from the `ade4` package :

``````R> library(ade4)
R> df <-data.frame(eggs = c("foo", "foo", "bar", "bar"), ham = c("red","blue","green","red"))
R> acm.disjonctif(df)
eggs.bar eggs.foo ham.blue ham.green ham.red
1        0        1        0         0       1
2        0        1        1         0       0
3        1        0        0         1       0
4        1        0        0         0       1
``````

Not exactly the case you are describing, but it can be useful too...

• Thanks, this helped me a lot as it uses less memory then model.matrix! May 11, 2015 at 15:21
• I like the way the variables get named; I dislike that they are returned as storage-hungry numeric when they should (IMHO) just be logicals.
– dsz
Aug 26, 2016 at 1:08

A quick way using the `reshape2` package:

``````require(reshape2)

> dcast(df.original, ham ~ eggs, length)

Using ham as value column: use value_var to override.
ham bar foo
1   1   0   1
2   2   0   1
3   3   1   0
4   4   1   0
``````

Note that this produces precisely the column names you want.

• Good. But be care of the duplicate of ham. say, d <- data.frame(eggs = c("foo", "bar", "foo"), ham = c(1,2,1)); dcast(d, ham ~ eggs, length) makes foo = 2. Feb 19, 2011 at 22:58
• @Kohske, true, but I was assuming `ham` is a unique row id. If `ham` is not a unique id then one must use some other unique-id (or create a dummy one) and use that in place of `ham`. Converting a categorical label to a binary indicator would only make sense for unique ids. Feb 19, 2011 at 23:42

probably dummy variable is similar to what you want. Then, model.matrix is useful:

``````> with(df.original, data.frame(model.matrix(~eggs+0), ham))
eggsbar eggsfoo ham
1       0       1   1
2       0       1   2
3       1       0   3
4       1       0   4
``````

A late entry `class.ind` from the `nnet` package

``````library(nnet)
with(df.original, data.frame(class.ind(eggs), ham))
bar foo ham
1   0   1   1
2   0   1   2
3   1   0   3
4   1   0   4
``````

Just came across this old thread and thought I'd add a function that utilizes ade4 to take a dataframe consisting of factors and/or numeric data and returns a dataframe with factors as dummy codes.

``````dummy <- function(df) {

NUM <- function(dataframe)dataframe[,sapply(dataframe,is.numeric)]
FAC <- function(dataframe)dataframe[,sapply(dataframe,is.factor)]

if (is.null(ncol(NUM(df)))) {
DF <- data.frame(NUM(df), acm.disjonctif(FAC(df)))
names(DF) <- colnames(df)[which(sapply(df, is.numeric))]
} else {
DF <- data.frame(NUM(df), acm.disjonctif(FAC(df)))
}
return(DF)
}
``````

Let's try it.

``````df <-data.frame(eggs = c("foo", "foo", "bar", "bar"),
ham = c("red","blue","green","red"), x=rnorm(4))
dummy(df)

df2 <-data.frame(eggs = c("foo", "foo", "bar", "bar"),
ham = c("red","blue","green","red"))
dummy(df2)
``````

Here is a more clear way to do it. I use model.matrix to create the dummy boolean variables and then merge it back into the original dataframe.

``````df.original <-data.frame(eggs = c("foo", "foo", "bar", "bar"), ham = c(1,2,3,4))
df.original
#   eggs ham
# 1  foo   1
# 2  foo   2
# 3  bar   3
# 4  bar   4

# Create the dummy boolean variables using the model.matrix() function.
> mm <- model.matrix(~eggs-1, df.original)
> mm
#   eggsbar eggsfoo
# 1       0       1
# 2       0       1
# 3       1       0
# 4       1       0
# attr(,"assign")
#  1 1
# attr(,"contrasts")
# attr(,"contrasts")\$eggs
#  "contr.treatment"

# Remove the "eggs" prefix from the column names as the OP desired.
colnames(mm) <- gsub("eggs","",colnames(mm))
mm
#   bar foo
# 1   0   1
# 2   0   1
# 3   1   0
# 4   1   0
# attr(,"assign")
#  1 1
# attr(,"contrasts")
# attr(,"contrasts")\$eggs
#  "contr.treatment"

# Combine the matrix back with the original dataframe.
result <- cbind(df.original, mm)
result
#   eggs ham bar foo
# 1  foo   1   0   1
# 2  foo   2   0   1
# 3  bar   3   1   0
# 4  bar   4   1   0

# At this point, you can select out the columns that you want.
``````

I needed a function to 'explode' factors that is a bit more flexible, and made one based on the acm.disjonctif function from the ade4 package. This allows you to choose the exploded values, which are 0 and 1 in acm.disjonctif. It only explodes factors that have 'few' levels. Numeric columns are preserved.

``````# Function to explode factors that are considered to be categorical,
# i.e., they do not have too many levels.
# - data: The data.frame in which categorical variables will be exploded.
# - values: The exploded values for the value being unequal and equal to a level.
# - max_factor_level_fraction: Maximum number of levels as a fraction of column length. Set to 1 to explode all factors.
# Inspired by the acm.disjonctif function in the ade4 package.
explode_factors <- function(data, values = c(-0.8, 0.8), max_factor_level_fraction = 0.2) {
exploders <- colnames(data)[sapply(data, function(col){
is.factor(col) && nlevels(col) <= max_factor_level_fraction * length(col)
})]
if (length(exploders) > 0) {
exploded <- lapply(exploders, function(exp){
col <- data[, exp]
n <- length(col)
dummies <- matrix(values, n, length(levels(col)))
dummies[(1:n) + n * (unclass(col) - 1)] <- values
colnames(dummies) <- paste(exp, levels(col), sep = '_')
dummies
})
# Only keep numeric data.
data <- data[sapply(data, is.numeric)]
data <- cbind(data, exploded)
}
return(data)
}
``````

(The question is 10yo, but for the sake of completeness...)

The function `i()` from the `fixest` package does exactly that.

Beyond creating a design matrix from a factor-like variable, you can also very easily do two extra things on the fly:

• binning values (with the argument 'bin'),
• excluding some factor values (with the argument `ref`).

And since it is made for this task, if your variable happens to be numeric you don't need to wrap it with `factor(x_num)` (as opposed to the `model.matrix` solution).

Here's an example:

``````library(fixest)
data(airquality)
table(airquality\$Month)
#>  5  6  7  8  9
#> 31 30 31 31 30

#>      5 6 7 8 9
#> [1,] 1 0 0 0 0
#> [2,] 1 0 0 0 0
#> [3,] 1 0 0 0 0
#> [4,] 1 0 0 0 0
#> [5,] 1 0 0 0 0
#> [6,] 1 0 0 0 0

#
# Binning (check out the help, there are many many ways to bin)
#

colSums(i(airquality\$Month, bin = 5:6)))
#>  5  7  8  9
#> 61 31 31 30

#
# References
#

head(i(airquality\$Month, ref = c(6, 9)), 3)
#>      5 7 8
#> [1,] 1 0 0
#> [2,] 1 0 0
#> [3,] 1 0 0
``````

And here's a little wrapper expanding all non-numeric variables (by default):

``````library(fixest)

# data: data.frame
# var: vector of variable names // if missing, all non numeric variables
# no argument checking
expand_factor = function(data, var){

if(missing(var)){
var = names(data)[!sapply(data, is.numeric)]
if(length(var) == 0) return(data)
}

data_list = unclass(data)
new = lapply(var, \(x) i(data_list[[x]]))
data_list[names(data_list) %in% var] = new

do.call("cbind", data_list)
}

my_data = data.frame(eggs = c("foo", "foo", "bar", "bar"), ham = c(1,2,3,4))

expand_factor(my_data)
#>      bar foo ham
#> [1,]   0   1   1
#> [2,]   0   1   2
#> [3,]   1   0   3
#> [4,]   1   0   4
``````

Finally, for those wondering, the timing is equivalent to the `model.matrix` solution.

``````library(microbenchmark)
my_data = data.frame(x = as.factor(sample(100, 1e6, TRUE)))

microbenchmark(mm = model.matrix(~x, my_data),
i = i(my_data\$x), times = 5)
#> Unit: milliseconds
#>  expr      min       lq     mean   median       uq      max neval
#>    mm 155.1904 156.7751 209.2629 182.4964 197.9084 353.9443     5
#>     i 154.1697 154.7893 159.5202 155.4166 163.9706 169.2550     5

``````

In `sapply` `==` over eggs could be used to generate dummy vectors:

``````x <- with(df.original, data.frame(+sapply(unique(eggs), `==`, eggs), ham))
x
#  foo bar ham
#1   1   0   1
#2   1   0   2
#3   0   1   3
#4   0   1   4

all.equal(x, df.desired)
# TRUE
``````

A maybe faster variant - Result best used as `list` or `data.frame`:

``````. <- unique(df.original\$eggs)
with(df.original,
data.frame(+do.call(cbind, lapply(setNames(., .), `==`, eggs)), ham))
``````

Indexing in a `matrix` - Result best used as `matrix`:

``````. <- unique(df.original\$eggs)
i <- match(df.original\$eggs, .)
nc <- length(.)
nr <- length(i)
cbind(matrix(`[<-`(integer(nc * nr), 1:nr + nr * (i - 1), 1), nr, nc,
dimnames=list(NULL, .)), df.original["ham"])
``````

Using `outer` - Result best used as `matrix`:

``````. <- unique(df.original\$eggs)
cbind(+outer(df.original\$eggs, setNames(., .), `==`), df.original["ham"])
``````

Using `rep` - Result best used as `matrix`:

``````. <- unique(df.original\$eggs)
n <- nrow(df.original)
cbind(+matrix(df.original\$eggs == rep(., each=n), n, dimnames=list(NULL, .)),
df.original["ham"])
``````