# ifelse makes factor 'forget' its levels order

I have a data frame with two factors, like this one:

``````data <- data.frame(
x = factor(rep(letters[1:3], 2)),
y = factor(rep(c('z','x','y'), each=2), c('z','x','y'))
)

data
x y
1 a z
2 b z
3 c x
4 a x
5 b y
6 c y
``````

I want to turn all the `y`s for which `x` is `a` into `NA`s. So I try:

``````factor(ifelse(data\$x=='a', NA, as.character(data\$y)))
<NA> z    x    <NA> y    y
Levels: x y z
``````

to get different levels order than in original data, which was:

``````data\$y
z z x x y y
Levels: z x y
``````

Can you suggest any way to keep original ordering, other than brute force like this:

``````factor(ifelse(data\$x=='a', NA, as.character(data\$y)), c('z','x','y'))
<NA> z    x    <NA> y    y
Levels: z x y
``````
• `data[data\$x == "a", "y"] <- NA` (Personally, I almost never use `ifelse` in my code.) – Roland Sep 16 at 9:11
• Thank you! Why not turning this to an answer? – Łukasz Deryło Sep 16 at 9:17
• It's too trivial. – Roland Sep 16 at 9:23
• useful + short > trivial – Łukasz Deryło Sep 16 at 9:28

Your method looks well. If you don't want to set new levels manually, you can take levels of `data\$y` as reference.

``````factor(ifelse(data\$x == 'a', NA, as.character(data\$y)), levels(data\$y))

# [1] <NA> z    x    <NA> y    y
# Levels: z x y
``````

You can also use `replace()`, which doesn't reset levels.

``````replace(data\$y, data\$x == 'a', NA)

# [1] <NA> z    x    <NA> y    y
# Levels: z x y
``````
• I like `replace` solution. Thanks! – Łukasz Deryło Sep 16 at 9:30

You could also use `[]` to preserve the factor attributes:

``````data\$y[] <- ifelse(data\$x=='a', NA, as.character(data\$y))
str(data\$y)
# Factor w/ 3 levels "z","x","y": NA 1 2 NA 3 3
``````

Based on Roland's comment, which is excellent solution, I came with `tidyverse` solution:

``````library(tidyverse)
library(magrittr)

data %>%
mutate(y = y %>% inset(x=='a', value=NA)) %>%
pull(y)

<NA> z    x    <NA> y    y
Levels: z x y
``````

Maybe it would be useful for someone :)

Another option, thanks to Darren Tsai:

``````data %>%
mutate(y = y %>% replace(x=='a', NA)) %>%
pull(y)

<NA> z    x    <NA> y    y
Levels: z x y
``````