# Populate a column using if statements in r

I have quite a simple question which I am currently struggling with. If I have an example dataframe:

``````a <- c(1:5)
b <- c(1,3,5,9,11)
df1 <- data.frame(a,b)
``````

How do I create a new column ('c') which is then populated using if statements on column b. For example: 'cat' for those values in b which are 1 or 2 'dog' for those values in b which are between 3 and 5 'rabbit' for those values in b which are greater than 6

So column 'c' using dataframe df1 would read: cat, dog, dog, rabbit, rabbit.

-
This is asked quite often, look here for example: stackoverflow.com/questions/12379128/…. –  flodel Dec 2 '12 at 19:25
@flodel: +1 for using findInterval in your answer. As you say this has been asked an answered many times. –  BondedDust Dec 2 '12 at 21:56

``````df1 <-
transform(
df1 ,
c =
ifelse( b %in% 1:2 , 'cat' ,
ifelse( b %in% 3:5 , 'dog' , 'rabbit' ) ) )
``````
-

Although ifelse() is useful, sometimes it doesn't provide what one would intuitively expect. So, I like to write it out.

``````a <- c(1:5)
b <- c(1,3,5,9,11)
df1 <- data.frame(a,b)

species <- function(x) {
if(x == 1 | x == 2) y <- "cat"
if(x > 2 & x < 6) y <- "dog"
if(x > 6) y <- "rabbit"
return(y)
}

df1\$c <- sapply(df1\$b,species)
``````
-
``````dfrm\$dc <- c("dog", "cat", "rabbit")[ findInterval(dfrm\$b, c(1, 2.5, 5.5, Inf) ]
``````

The findInterval approach will be much faster than nested `ifelse` strategies, and I'm guessing very much faster than a function that loops over unnested `if` statements. Those of us working with bigger data do notice the differences when we pick inefficient algorithms.

-