# Create new column based on 4 values in another column

I want to create a new column based on 4 values in another column.

``````if col1=1 then col2= G;
if col1=2 then col2=H;
if col1=3 then col2=J;
if col1=4 then col2=K.
``````

HOW DO I DO THIS IN R? Please I need someone to help address this. I have tried if/else and ifelse but none seems to be working. Thanks

-
what programing language are you using? –  The GiG Oct 5 '11 at 8:03
@TheGiG The OP marked the question with r –  Andrie Oct 5 '11 at 8:36
Highly related: case statement equivalent, How do add a column in a `data.frame`?, Data cleaning in Excel sheets (in this one another set of links). –  Marek Oct 5 '11 at 10:00

You have a special case of looking up values where the index are integer numbers 1:4. This means you can use vector indexing to solve your problem in one easy step.

First, create some sample data:

``````set.seed(1)
dat <- data.frame(col1 = sample(1:4, 10, replace = TRUE))
``````

Next, define the lookup values, and use `[` subsetting to find the desired results:

``````values <- c("G", "H", "J", "K")
dat\$col2 <- values[dat\$col1]
``````

The results:

``````dat
col1 col2
1     2    H
2     2    H
3     3    J
4     4    K
5     1    G
6     4    K
7     4    K
8     3    J
9     3    J
10    1    G
``````

More generally, you can use `[` subsetting combined with `match` to solve this kind of problem:

``````index <- c(1, 2, 3, 4)
values <- c("G", "H", "J", "K")
dat\$col2 <- values[match(dat\$col1, index)]
dat
col1 col2
1     2    H
2     2    H
3     3    J
4     4    K
5     1    G
6     4    K
7     4    K
8     3    J
9     3    J
10    1    G
``````
-

There are a number of ways of doing this, but here's one.

``````set.seed(357)
mydf <- data.frame(col1 = sample(1:4, 10, replace = TRUE))
mydf\$col2 <- rep(NA, nrow(mydf))
mydf[mydf\$col1 == 1, ][, "col2"] <- "A"
mydf[mydf\$col1 == 2, ][, "col2"] <- "B"
mydf[mydf\$col1 == 3, ][, "col2"] <- "C"
mydf[mydf\$col1 == 4, ][, "col2"] <- "D"

col1 col2
1     1    A
2     1    A
3     2    B
4     1    A
5     3    C
6     2    B
7     4    D
8     3    C
9     4    D
10    4    D
``````

Here's one using `car`'s `recode`.

``````library(car)
mydf\$col3 <- recode(mydf\$col1, "1 = 'A'; 2 = 'B'; 3 = 'C'; 4 = 'D'")
``````

One more from this question:

``````mydf\$col4 <- c("A", "B", "C", "D")[mydf\$col1]
``````
-

You could use nested `ifelse`:

``````col2 <- ifelse(col1==1, "G",
ifelse(col1==2, "H",
ifelse(col1==3, "J",
ifelse(col1==4, "K",
NA  )))) # all other values map to NA
``````

In this simple case it's overkill, but for more complicated ones...

-
You could have a look at `?symnum`.
``````col2<-symnum(col1, seq(0.5, 4.5, by=1), symbols=c("G", "H", "J", "K"))