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 data.table or reshape2

```
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 tidyr (with `mutate`

from dplyr)

```
library(dplyr)
library(tidyr)
df2 %>%
mutate(v = 1, yr = year) %>%
spread(yr, v, fill = 0)
```

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
```