# Recoding levels of factors

I have following dataframe:

``````forStack
AGE  BMI time          A         B      ID
1  59 23.8    0     (0,75]  (4,14.9] 9000099
2  69 29.8    0 (96.4,100]  (-Inf,0] 9000296
3  71 22.7    0  (75,89.3]  (4,14.9] 9000622
4  56 32.4    0     (0,75] (14.9,68] 9000798
5  72 30.7    0     (0,75] (14.9,68] 9001104
6  75 23.5    0 (96.4,100]     (0,4] 9001400

dput (forStack)
structure(list(AGE = c(59, 69, 71, 56, 72, 75), BMI = c(23.8,
29.8, 22.7, 32.4, 30.7, 23.5), time = c(0, 0, 0, 0, 0, 0), A = structure(c(2L,
5L, 3L, 2L, 2L, 5L), .Label = c("(-Inf,0]", "(0,75]", "(75,89.3]",
"(89.3,96.4]", "(96.4,100]", "(100, Inf]"), class = "factor"),
B = structure(c(3L, 1L, 3L, 4L, 4L, 2L), .Label = c("(-Inf,0]",
"(0,4]", "(4,14.9]", "(14.9,68]", "(68, Inf]"), class = "factor"),
ID = c(9000099, 9000296, 9000622, 9000798, 9001104, 9001400
)), .Names = c("AGE", "BMI", "time", "A", "B", "ID"), row.names = c(NA,
6L), class = "data.frame")
``````

Variables `A` and `B` are factors representing quartiles:

``````   forStack\$A
[1] (0,75]     (96.4,100] (75,89.3]  (0,75]     (0,75]     (96.4,100]
Levels: (-Inf,0] (0,75] (75,89.3] (89.3,96.4] (96.4,100] (100, Inf]

forStack\$B
[1] (4,14.9]  (-Inf,0]  (4,14.9]  (14.9,68] (14.9,68] (0,4]
Levels: (-Inf,0] (0,4] (4,14.9] (14.9,68] (68, Inf]
``````

I would like to recode `A` and `B` values to two-level factors as follows:

For `A`, the upper factor levels `(96.4,100]` and `(100, Inf]` should be recoded as 0 level, other levels - as 1 level

For `B` the the lowest factor levels `(-Inf,0]` and `(0,4]` should be recoded as 0 level, other levels - as 1 level

Thus, the dataframe should look like:

`````` forStack
AGE  BMI time          A         B      ID
1  59 23.8    0         1         1   9000099
2  69 29.8    0         0         0   9000296
3  71 22.7    0         1         1   9000622
4  56 32.4    0         1         1   9000798
5  72 30.7    0         1         1   9001104
6  75 23.5    0         0         0   9001400
``````

What is the most efficient way to do it? Thank you very much in advance

-

Here's one approach:

``````within(forStack, {
A <- as.numeric(!A %in% tail(levels(A), 2))
B <- as.numeric(!B %in% head(levels(B), 2))
})
#   AGE  BMI time A B      ID
# 1  59 23.8    0 1 1 9000099
# 2  69 29.8    0 0 0 9000296
# 3  71 22.7    0 1 1 9000622
# 4  56 32.4    0 1 1 9000798
# 5  72 30.7    0 1 1 9001104
# 6  75 23.5    0 0 0 9001400
``````

The basic idea here is that `head` and `tail` both have an "`n`" argument that lets you specify how many values you want from the "head" and "tail" of your vector or dataset. That lets us easily grab `(96.4,100]` and `(100, Inf]` for vector A, and the relevant values for vector B.

`within` is a convenient way to dynamically replace the values in your `data.frame`.

-

As you know that the factors are ordered, you can do the following

``````within(forStack, {
Ar <- (as.integer(A) < length(levels(A))-1)*1
Br <- (as.integer(B) > 2)*1
})
``````
-
Thank you so much, Ananda Mahto and mnel! Your answers are very helpful, how to accept them both? –  DSSS Apr 29 '13 at 6:12
This is also very nice. +1 –  Ananda Mahto Apr 29 '13 at 6:20