# R split factor to m-columns with original length

Suppose I have a factor (in a data.frame) which represents years:

``````  year
1 2012
2 2012
3 2012
4 2013
5 2013
6 2013
7 2014
8 2014
9 2014
``````

I would to to create (in this case) three new columns in the data.frame and end up with:

``````  y2012 y2013 y2014
1     1     0     0
2     1     0     0
3     1     0     0
4     0     1     0
5     0     1     0
6     0     1     0
7     0     0     1
8     0     0     1
9     0     0     1
``````

I can of course write a bunch of ifelse-statements, but that seems very unhandy.

• have a look at `?table` – SabDeM Aug 26 '15 at 12:30
• Try with `?model.matrix` or `table(1:nrow(df1), df1\$year)` – akrun Aug 26 '15 at 12:31

Also:

``````# Add "y" prefix to your years
df\$year = paste0("y", df\$year)

# Make a table, using row names as one of the variables
out = table(row.names(df), df\$year)

# Finally convert to data.frame
out = as.data.frame.matrix(out)

out
#  y2012 y2013 y2014
#1     1     0     0
#2     1     0     0
#3     1     0     0
#4     0     1     0
#5     0     1     0
#6     0     1     0
#7     0     0     1
#8     0     0     1
#9     0     0     1
``````

We can use `mtabulate` from `qdapTools`

``````library(qdapTools)
mtabulate(df1\$year)
#  2012 2013 2014
#1    1    0    0
#2    1    0    0
#3    1    0    0
#4    0    1    0
#5    0    1    0
#6    0    1    0
#7    0    0    1
#8    0    0    1
#9    0    0    1
``````

Or using some options in `base R`.

1. `model.matrix`. We convert the 'year' column to `factor` class and use that in the model.matrix to get the binary columns.

``````model.matrix(~0+factor(year), df1)
``````
2. `table`. We can get the expected output using `table` of the sequence of rows of df1 and the column 'year'.

``````table(1:nrow(df1), df1\$year)
``````

Also maybe

``````library(dplyr)
library(tidyr)
df %>%
mutate(id = 1L) %>%

#   2012 2013 2014
# 1    1    0    0
# 2    1    0    0
# 3    1    0    0
# 4    0    1    0
# 5    0    1    0
# 6    0    1    0
# 7    0    0    1
# 8    0    0    1
# 9    0    0    1
``````

Maybe this too (as can't think of a better way)

``````library(data.table)
dcast(setDT(df)[, `:=`(indx = .I, indx2 = 1L)], indx ~ year, fill = 0L)
#    indx 2012 2013 2014
# 1:    1    1    0    0
# 2:    2    1    0    0
# 3:    3    1    0    0
# 4:    4    0    1    0
# 5:    5    0    1    0
# 6:    6    0    1    0
# 7:    7    0    0    1
# 8:    8    0    0    1
# 9:    9    0    0    1
``````

If you want to stick with `base` R,

``````dframe <- data.frame(x = factor(rep(2012:2014, each = 3)))

lapply(levels(dframe\$x),
function(l, x) ifelse(x %in% l, 1, 0),
dframe\$x)
``````

This can be done with `contrasts` as well.

``````contrasts(factor(df1\$year), contrasts=F)[factor(df1\$year),]
#      2012 2013 2014
# 2012    1    0    0
# 2012    1    0    0
# 2012    1    0    0
# 2013    0    1    0
# 2013    0    1    0
# 2013    0    1    0
# 2014    0    0    1
# 2014    0    0    1
# 2014    0    0    1
``````