# Generate a dummy-variable

I have trouble generating the following dummy-variables in R:

I'm analyzing yearly time series data (time period 1948-2009). I have two questions:

1. How do I generate a dummy variable for observation #10, i.e. for year 1957 (value = 1 at 1957 and zero otherwise)?

2. How do I generate a dummy variable which is zero before 1957 and takes the value 1 from 1957 and onwards to 2009?

Another option that can work better if you have many variables is `factor` and `model.matrix`.

``````> year.f = factor(year)
> dummies = model.matrix(~year.f)
``````

This will include an intercept column (all ones) and one column for each of the years in your data set except one, which will be the "default" or intercept value.

You can change how the "default" is chosen by messing with `contrasts.arg` in `model.matrix`.

Also, if you want to omit the intercept, you can just drop the first column or add `+0` to the end of the formula.

Hope this is useful.

• what if you want to generate dummy variables for all (instead of k-1) with no intercept? – Fernando Hoces De La Guardia Mar 27 '15 at 16:52
• note that model.matrix( ) accepts multiple variables to transform into dummies: model.matrix( ~ var1 + var2, data = df) Again, just be sure that they are factors. – slizb May 1 '15 at 19:32
• @Synergist table(1:n, factor). Where factor is the original variable and n is its length – Fernando Hoces De La Guardia Jun 3 '15 at 15:43
• @Synergist that table is a n x k matrix with all k indicator variables (instead of k-1) – Fernando Hoces De La Guardia Jun 3 '15 at 15:49
• @FernandoHocesDeLaGuardia You can remove the intercept from a formula either with `+ 0` or `- 1`. So `model.matrix(~ year.f + 0)` will give a give dummy variables without a reference level. – Gregor - reinstate Monica Jan 6 '16 at 20:16

The simplest way to produce these dummy variables is something like the following:

``````> print(year)
 1956 1957 1957 1958 1958 1959
> dummy <- as.numeric(year == 1957)
> print(dummy)
 0 1 1 0 0 0
> dummy2 <- as.numeric(year >= 1957)
> print(dummy2)
 0 1 1 1 1 1
``````

More generally, you can use `ifelse` to choose between two values depending on a condition. So if instead of a 0-1 dummy variable, for some reason you wanted to use, say, 4 and 7, you could use `ifelse(year == 1957, 4, 7)`.

Using dummies::dummy():

``````library(dummies)

# example data
df1 <- data.frame(id = 1:4, year = 1991:1994)

df1 <- cbind(df1, dummy(df1\$year, sep = "_"))

df1
#   id year df1_1991 df1_1992 df1_1993 df1_1994
# 1  1 1991        1        0        0        0
# 2  2 1992        0        1        0        0
# 3  3 1993        0        0        1        0
# 4  4 1994        0        0        0        1
``````
• Maybe adding "fun= factor" in function dummy can help if that is the meaning of the variable. – Filippo Mazza Mar 8 '17 at 10:35
• @FilippoMazza I prefer to keep them as integer, yes, we could set factor if needed. – zx8754 Mar 8 '17 at 10:51
• how do you remove df1 before each dummy column header names? – mike Jun 10 '17 at 22:47
• @mike colnames(df1) <- gsub("df1_", "", fixed = TRUE, colnames(df1)) – zx8754 Jun 11 '17 at 5:01

Package `mlr` includes `createDummyFeatures` for this purpose:

``````library(mlr)
df <- data.frame(var = sample(c("A", "B", "C"), 10, replace = TRUE))
df

#    var
# 1    B
# 2    A
# 3    C
# 4    B
# 5    C
# 6    A
# 7    C
# 8    A
# 9    B
# 10   C

createDummyFeatures(df, cols = "var")

#    var.A var.B var.C
# 1      0     1     0
# 2      1     0     0
# 3      0     0     1
# 4      0     1     0
# 5      0     0     1
# 6      1     0     0
# 7      0     0     1
# 8      1     0     0
# 9      0     1     0
# 10     0     0     1
``````

`createDummyFeatures` drops original variable.

• Enrique, I've tried installing the package, but it doesn't seem to be working after doing library(mlr). I get the following error:«Error in loadNamespace(j <- i[[1L]], c(lib.loc, .libPaths()), versionCheck = vI[[j]]) : there is no package called ‘ggvis’ In addition: Warning message: package ‘mlr’ was built under R version 3.2.5 Error: package or namespace load failed for ‘mlr’» – An old man in the sea. Apr 13 '17 at 11:17
• you need to install 'ggvis' first – Ted Mosby Jul 26 '18 at 20:01

The other answers here offer direct routes to accomplish this task—one that many models (e.g. `lm`) will do for you internally anyway. Nonetheless, here are ways to make dummy variables with Max Kuhn's popular `caret` and `recipes` packages. While somewhat more verbose, they both scale easily to more complicated situations, and fit neatly into their respective frameworks.

### `caret::dummyVars`

With `caret`, the relevant function is `dummyVars`, which has a `predict` method to apply it on a data frame:

``````df <- data.frame(letter = rep(c('a', 'b', 'c'), each = 2),
y = 1:6)

library(caret)

dummy <- dummyVars(~ ., data = df, fullRank = TRUE)

dummy
#> Dummy Variable Object
#>
#> Formula: ~.
#> 2 variables, 1 factors
#> Variables and levels will be separated by '.'
#> A full rank encoding is used

predict(dummy, df)
#>   letter.b letter.c y
#> 1        0        0 1
#> 2        0        0 2
#> 3        1        0 3
#> 4        1        0 4
#> 5        0        1 5
#> 6        0        1 6
``````

### `recipes::step_dummy`

With `recipes`, the relevant function is `step_dummy`:

``````library(recipes)

dummy_recipe <- recipe(y ~ letter, df) %>%
step_dummy(letter)

dummy_recipe
#> Data Recipe
#>
#> Inputs:
#>
#>       role #variables
#>    outcome          1
#>  predictor          1
#>
#> Steps:
#>
#> Dummy variables from letter
``````

Depending on context, extract the data with `prep` and either `bake` or `juice`:

``````# Prep and bake on new data...
dummy_recipe %>%
prep() %>%
bake(df)
#> # A tibble: 6 x 3
#>       y letter_b letter_c
#>   <int>    <dbl>    <dbl>
#> 1     1        0        0
#> 2     2        0        0
#> 3     3        1        0
#> 4     4        1        0
#> 5     5        0        1
#> 6     6        0        1

# ...or use `retain = TRUE` and `juice` to extract training data
dummy_recipe %>%
prep(retain = TRUE) %>%
juice()
#> # A tibble: 6 x 3
#>       y letter_b letter_c
#>   <int>    <dbl>    <dbl>
#> 1     1        0        0
#> 2     2        0        0
#> 3     3        1        0
#> 4     4        1        0
#> 5     5        0        1
#> 6     6        0        1
``````

What I normally do to work with this kind of dummy variables is:

(1) how do I generate a dummy variable for observation #10, i.e. for year 1957 (value = 1 at 1957 and zero otherwise)

``````data\$factor_year_1 <- factor ( with ( data, ifelse ( ( year == 1957 ), 1 , 0 ) ) )
``````

(2) how do I generate a dummy-variable which is zero before 1957 and takes the value 1 from 1957 and onwards to 2009?

``````data\$factor_year_2 <- factor ( with ( data, ifelse ( ( year < 1957 ), 0 , 1 ) ) )
``````

Then, I can introduce this factor as a dummy variable in my models. For example, to see whether there is a long-term trend in a varible `y` :

``````summary ( lm ( y ~ t,  data = data ) )
``````

Hope this helps!

For the usecase as presented in the question, you can also just multiply the logical condition with `1` (or maybe even better, with `1L`):

``````# example data
df1 <- data.frame(yr = 1951:1960)

# create the dummies
df1\$is.1957 <- 1L * (df1\$yr == 1957)
df1\$after.1957 <- 1L * (df1\$yr >= 1957)
``````

which gives:

``````> df1
yr is.1957 after.1957
1  1951       0          0
2  1952       0          0
3  1953       0          0
4  1954       0          0
5  1955       0          0
6  1956       0          0
7  1957       1          1
8  1958       0          1
9  1959       0          1
10 1960       0          1
``````

For the usecases as presented in for example the answers of @zx8754 and @Sotos, there are still some other options which haven't been covered yet imo.

1) Make your own `make_dummies`-function

``````# example data
df2 <- data.frame(id = 1:5, year = c(1991:1994,1992))

# create a function
make_dummies <- function(v, prefix = '') {
s <- sort(unique(v))
d <- outer(v, s, function(v, s) 1L * (v == s))
colnames(d) <- paste0(prefix, s)
d
}

# bind the dummies to the original dataframe
cbind(df2, make_dummies(df2\$year, prefix = 'y'))
``````

which gives:

``````  id year y1991 y1992 y1993 y1994
1  1 1991     1     0     0     0
2  2 1992     0     1     0     0
3  3 1993     0     0     1     0
4  4 1994     0     0     0     1
5  5 1992     0     1     0     0
``````

2) use the `dcast`-function from either or

`````` dcast(df2, id + year ~ year, fun.aggregate = length)
``````

which gives:

``````  id year 1991 1992 1993 1994
1  1 1991    1    0    0    0
2  2 1992    0    1    0    0
3  3 1993    0    0    1    0
4  4 1994    0    0    0    1
5  5 1992    0    1    0    0
``````

However, this will not work when there are duplicate values in the column for which the dummies have to be created. In the case a specific aggregation function is needed for `dcast` and the result of of `dcast` need to be merged back to the original:

``````# example data
df3 <- data.frame(var = c("B", "C", "A", "B", "C"))

# aggregation function to get dummy values
f <- function(x) as.integer(length(x) > 0)

# reshape to wide with the cumstom aggregation function and merge back to the original
merge(df3, dcast(df3, var ~ var, fun.aggregate = f), by = 'var', all.x = TRUE)
``````

which gives (note that the result is ordered according to the `by` column):

``````  var A B C
1   A 1 0 0
2   B 0 1 0
3   B 0 1 0
4   C 0 0 1
5   C 0 0 1
``````

3) use the `spread`-function from (with `mutate` from )

``````library(dplyr)
library(tidyr)

df2 %>%
mutate(v = 1, yr = year) %>%
``````

which gives:

``````  id year 1991 1992 1993 1994
1  1 1991    1    0    0    0
2  2 1992    0    1    0    0
3  3 1993    0    0    1    0
4  4 1994    0    0    0    1
5  5 1992    0    1    0    0
``````

If you want to get K dummy variables, instead of K-1, try:

``````dummies = table(1:length(year),as.factor(year))
``````

Best,

• the resulting table cannot be used as a data.frame. If that's a problem, use `as.data.frame.matrix(dummies)` to translate it into one – sheß Mar 27 '18 at 19:21

I read this on the kaggle forum:

``````#Generate example dataframe with character column
example <- as.data.frame(c("A", "A", "B", "F", "C", "G", "C", "D", "E", "F"))
names(example) <- "strcol"

#For every unique value in the string column, create a new 1/0 column
#This is what Factors do "under-the-hood" automatically when passed to function requiring numeric data
for(level in unique(example\$strcol)){
example[paste("dummy", level, sep = "_")] <- ifelse(example\$strcol == level, 1, 0)
}
``````

The `ifelse` function is best for simple logic like this.

``````> x <- seq(1950, 1960, 1)

ifelse(x == 1957, 1, 0)
ifelse(x <= 1957, 1, 0)

>   0 0 0 0 0 0 0 1 0 0 0
>   1 1 1 1 1 1 1 1 0 0 0
``````

Also, if you want it to return character data then you can do so.

``````> x <- seq(1950, 1960, 1)

ifelse(x == 1957, "foo", "bar")
ifelse(x <= 1957, "foo", "bar")

>   "bar" "bar" "bar" "bar" "bar" "bar" "bar" "foo" "bar" "bar" "bar"
>   "foo" "foo" "foo" "foo" "foo" "foo" "foo" "foo" "bar" "bar" "bar"
``````

Categorical variables with nesting...

``````> x <- seq(1950, 1960, 1)

ifelse(x == 1957, "foo", ifelse(x == 1958, "bar","baz"))

>   "baz" "baz" "baz" "baz" "baz" "baz" "baz" "foo" "bar" "baz" "baz"
``````

This is the most straightforward option.

Another way is to use `mtabulate` from `qdapTools` package, i.e.

``````df <- data.frame(var = sample(c("A", "B", "C"), 5, replace = TRUE))
var
#1   C
#2   A
#3   C
#4   B
#5   B

library(qdapTools)
mtabulate(df\$var)
``````

which gives,

``````  A B C
1 0 0 1
2 1 0 0
3 0 0 1
4 0 1 0
5 0 1 0
``````

I use such a function (for data.table):

``````# Ta funkcja dla obiektu data.table i zmiennej var.name typu factor tworzy dummy variables o nazwach "var.name: (level1)"
factorToDummy <- function(dtable, var.name){
stopifnot(is.data.table(dtable))
stopifnot(var.name %in% names(dtable))
stopifnot(is.factor(dtable[, get(var.name)]))

dtable[, paste0(var.name,": ",levels(get(var.name)))] -> new.names
dtable[, (new.names) := transpose(lapply(get(var.name), FUN = function(x){x == levels(get(var.name))})) ]

cat(paste("\nDodano zmienne dummy: ", paste0(new.names, collapse = ", ")))
}
``````

Usage:

``````data <- data.table(data)
data[, x:= droplevels(x)]
factorToDummy(data, "x")
``````

Convert your data to a data.table and use set by reference and row filtering

``````library(data.table)

dt <- as.data.table(your.dataframe.or.whatever)
dt[, is.1957 := 0]
dt[year == 1957, is.1957 := 1]
``````

Proof-of-concept toy example:

``````library(data.table)

dt <- as.data.table(cbind(c(1, 1, 1), c(2, 2, 3)))
dt[, is.3 := 0]
dt[V2 == 3, is.3 := 1]
``````

Hi i wrote this general function to generate a dummy variable which essentially replicates the replace function in Stata.

If x is the data frame is x and i want a dummy variable called `a` which will take value `1` when `x\$b` takes value `c`

``````introducedummy<-function(x,a,b,c){
g<-c(a,b,c)
n<-nrow(x)
newcol<-g
p<-colnames(x)
p2<-c(p,newcol)
new1<-numeric(n)
state<-x[,g]
interest<-g
for(i in 1:n){
if(state[i]==interest){
new1[i]=1
}
else{
new1[i]=0
}
}
colnames(x)<-p2
x
}
``````

another way you can do it is use

``````ifelse(year < 1965 , 1, 0)
``````

We can also use `cSplit_e` from `splitstackshape`. Using @zx8754's data

``````df1 <- data.frame(id = 1:4, year = 1991:1994)
splitstackshape::cSplit_e(df1, "year", fill = 0)

#  id year year_1 year_2 year_3 year_4
#1  1 1991      1      0      0      0
#2  2 1992      0      1      0      0
#3  3 1993      0      0      1      0
#4  4 1994      0      0      0      1
``````

To make it work for data other than numeric we need to specify `type` as `"character"` explicitly

``````df1 <- data.frame(id = 1:4, let = LETTERS[1:4])
splitstackshape::cSplit_e(df1, "let", fill = 0, type = "character")

#  id let let_A let_B let_C let_D
#1  1   A     1     0     0     0
#2  2   B     0     1     0     0
#3  3   C     0     0     1     0
#4  4   D     0     0     0     1
``````