3

Heyho, I am a beginner in R and have a problem to which I couldn't find a solution so far. I would like to transform dummy variables back to categorical variables.

|dummy1| dummy2|dummy3|
|------| ------|------|
| 0    | 1     |0     |
| 1    | 0     |0     |
| 0    | 1     |0     |
| 0    | 0     |1     |

into:

|dummy |
|------|
|dummy2|
|dummy1|
|dummy2|
|dummy3|

Do you have any idea how to do that in R? Thanks in advance.

0

3 Answers 3

3

You can do this with data.table

id_cols = c("x1", "x2") 
data.table::melt.data.table(data = dt, id.vars = id_cols, 
                            na.rm = TRUE, 
                            measure = patterns("dummy"))

Example:

t = data.table(dummy_a = c(1, 0, 0), dummy_b = c(0, 1, 0), dummy_c = c(0, 0, 1), id = c(1, 2, 3))
data.table::melt.data.table(data = t, 
                            id.vars = "id", 
                            measure = patterns("dummy_"), 
                            na.rm = T)[value == 1, .(id, variable)]

Output

   id variable
1:  1  dummy_a
2:  2  dummy_b
3:  3  dummy_c

It's even easier if you remplaze 0 by NA, so na.rm = TRUE in melt will drop every row with NA

1

We can use max.col

data.frame(dummy = names(df1)[max.col(df1)])
#    dummy
#1 dummy2
#2 dummy1
#3 dummy2
#4 dummy3

data

df1 <- structure(list(dummy1 = c(0L, 1L, 0L, 0L), dummy2 = c(1L, 0L, 
 1L, 0L), dummy3 = c(0L, 0L, 0L, 1L)), .Names = c("dummy1", "dummy2", 
 "dummy3"), class = "data.frame", row.names = c(NA, -4L))
2
  • Thanks for the response. What am I doing in the case, that I have also other categorical variables in the dataframe. Not only dummy1-3 but also e.g. education 1-4
    – waterline
    Mar 6, 2018 at 12:23
  • @waterline Then just subset the dataset for dummy i.e. nm1 <- grep('dummy", names(df1), value = TRUE); nm1[max.col(df1[nm1])]
    – akrun
    Mar 6, 2018 at 12:26
0

Here is a tidyverse solution, using tidyr::gather. Here we treat the key as the variable that each dummy is a category of, and value as the presence/absence. Replacing 0 with NA combined with na.rm = TRUE in gather means we don't keep all the rest of the rows we don't want and don't create an unnecessarily large intermediate dataset.

df1 <- structure(list(dummy1 = c(0L, 1L, 0L, 0L), dummy2 = c(1L, 0L, 
                                                             1L, 0L), dummy3 = c(0L, 0L, 0L, 1L), ed1 = c(1, 0, 1, 0), ed2 = c(0, 
                                                                                                                               1, 0, 1), id = c(1, 2, 3, 4)), .Names = c("dummy1", "dummy2", 
                                                                                                                                                                         "dummy3", "ed1", "ed2", "id"), row.names = c(NA, -4L), class = "data.frame")
library(tidyverse)
df1 %>%
  mutate_at(vars(dummy1:dummy3, ed1:ed2), ~ ifelse(. == 0, NA, .)) %>%
  gather("dummy", "present", dummy1:dummy3, na.rm = TRUE) %>%
  gather("ed", "present2", ed1:ed2, na.rm = TRUE) %>%
  select(-present, -present2)
#>   id  dummy  ed
#> 2  1 dummy2 ed1
#> 3  3 dummy2 ed1
#> 5  2 dummy1 ed2
#> 8  4 dummy3 ed2

Created on 2018-03-06 by the reprex package (v0.2.0).

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