generate column values with multiple conditions in R

I have a dataframe `z` and I want to create the new column based on the values of two old columns of `z`. Following is the process:

``````>z<-cbind(x=1:10,y=11:20,t=21:30)
> z<-as.data.frame(z)
>z
x  y  t
1   1 11 21
2   2 12 22
3   3 13 23
4   4 14 24
5   5 15 25
6   6 16 26
7   7 17 27
8   8 18 28
9   9 19 29
10 10 20 30
``````

# generate the column `q` which is equal to the values of column `t` times 4 if `x=3` and for other values of `x`, it is equal to the values of column `t`.

``````for (i in 1:nrow(z)){
z\$q[i]=if (z\$x[i]==4) 4*z\$t[i] else z\$t[i]}
``````

But, my problem is that I want to apply multiple conditions:

For example, I want to get something like this:

``````(If x=2, q=t*2; x=4, q=t*4; x=7, q=t*3; for other it is equal to t)

> z
x  y  t  q
1   1 11 21 21
2   2 12 22 44
3   3 13 23 23
4   4 14 24 96
5   5 15 25 25
6   6 16 26 26
7   7 17 27 81
8   8 18 28 28
9   9 19 29 29
10 10 20 30 30
``````

How do I get the second output using the loops or any other method?

-
Also, it's better to use `ifelse` than the `for` loop you had. Instead of `(for i in 1:length(x)) y[i] <- if ... else ...` you can just do `y <- ifelse(logical, true, false)` –  Señor O Dec 31 '12 at 20:18
@ Señor : Based on your suggestion, I posted the answer to my own question. Thanks! –  Metrics Jan 1 '13 at 15:39

Generate a multipler vector:

``````tt <- rep(1, max(z\$x))
tt[2] <- 2
tt[4] <- 4
tt[7] <- 3
``````

And here is your new column:

``````> z\$t * tt[z\$x]
[1] 21 44 23 96 25 26 81 28 29 30

> z\$q <- z\$t * tt[z\$x]
> z
x  y  t  q
1   1 11 21 21
2   2 12 22 44
3   3 13 23 23
4   4 14 24 96
5   5 15 25 25
6   6 16 26 26
7   7 17 27 81
8   8 18 28 28
9   9 19 29 29
10 10 20 30 30
``````

This will not work if there are negative values in `z\$x`.

Edited

Here is a generalization of the above, where a function is used to generate the multiplier vector. In fact, we create a function based on parameters.

We want to transform the following values:

``````2 -> 2
4 -> 4
7 -> 3
``````

Otherwise a default of 1 is taken.

Here is a function which generates the desired function:

``````f <- function(default, x, y) {
x.min <- min(x)
x.max <- max(x)
y.vals <- rep(default, x.max-x.min+1)
y.vals[x-x.min+1] <- y

function(z) {
result <- rep(default, length(z))
tmp <- z>=x.min & z<=x.max
result[tmp] <- y.vals[z[tmp]-x.min+1]
result
}
}
``````

Here is how we use it:

``````x <- c(2,4,7)
y <- c(2,4,3)

g <- f(1, x, y)
``````

`g` is the function that we want. It should be clear that any mapping can be supplied via the `x` and `y` parameters to `f`.

``````g(z\$x)
## [1] 1 2 1 4 1 1 3 1 1 1

g(z\$x)*z\$t
## [1] 21 44 23 96 25 26 81 28 29 30
``````

It should be clear this only works for integer values.

-
Thanks a lot Matthew. –  Metrics Dec 31 '12 at 20:37

By building a nested `ifelse` functional by recursion, you can get the benefits of both solutions offered so far: `ifelse` is fast and can work with any type of data, while @Matthew's solution is more functional yet limited to integers and potentially slow.

``````decode <- function(x, search, replace, default = NULL) {

# build a nested ifelse function by recursion
decode.fun <- function(search, replace, default = NULL)
if (length(search) == 0) {
function(x) if (is.null(default)) x else rep(default, length(x))
} else {
function(x) ifelse(x == search[1], replace[1],
decode.fun(tail(search, -1),
tail(replace, -1),
default)(x))
}

return(decode.fun(search, replace, default)(x))
}
``````

Note how the `decode` function is named after the SQL function. I wish a function like this made it to the base R package... Here are a couple examples illustrating its usage:

``````decode(x = 1:5, search = 3, replace = -1)
# [1]  1  2 -1  4  5
decode(x = 1:5, search = c(2, 4), replace = c(20, 40), default = 3)
# [1] 3 20  3  40  3
``````

``````transform(z, q = decode(x, search = c(2,4,7), replace = c(2,4,3), default = 1) * t)

#    x  y  t  q
# 1   1 11 21 21
# 2   2 12 22 44
# 3   3 13 23 23
# 4   4 14 24 96
# 5   5 15 25 25
# 6   6 16 26 26
# 7   7 17 27 81
# 8   8 18 28 28
# 9   9 19 29 29
# 10 10 20 30 30
``````
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Very nice. I was thinking of doing a recursive function definition like this, but left that for "later" which might have been never. –  Matthew Lundberg Jan 5 '13 at 3:46
Even nicer if you generalize this so that `search` can be a list of vectors of targets (e.g. `search=list(c("apple","orange"),c("carrot","potato")), replace=c("fruit","root")` (or even `search=list(fruit=c("apple","orange"),root=c("carrot","potato"))`, although that only works for string replacements). I think the `car` package has a `recode` for factors, but it's string-based and clunky ... –  Ben Bolker Jan 7 '13 at 14:50

Based on the suggestion of Señor :

``````> z\$q <- ifelse(z\$x == 2, z\$t * 2,
ifelse(z\$x == 4, z\$t * 4,
ifelse(z\$x == 7, z\$t * 3,
z\$t * 1)))
> z
x  y  t  q
1   1 11 21 21
2   2 12 22 44
3   3 13 23 23
4   4 14 24 96
5   5 15 25 25
6   6 16 26 26
7   7 17 27 81
8   8 18 28 28
9   9 19 29 29
10 10 20 30 30
``````
-

Here is an easy solution with just one `ifelse` command:

Calculate the multiplier of `t`:

``````ifelse(z\$x == 7, 3, z\$x ^ (z\$x %in% c(2, 4)))
``````

The complete command:

``````transform(z, q = t * ifelse(x == 7, 3, x ^ (x %in% c(2, 4))))

x  y  t  q
1   1 11 21 21
2   2 12 22 44
3   3 13 23 23
4   4 14 24 96
5   5 15 25 25
6   6 16 26 26
7   7 17 27 81
8   8 18 28 28
9   9 19 29 29
10 10 20 30 30
``````
-

You can also use match to do this. I tend to use this a lot while assigning parameters like col, pch and cex to points in scatterplots

``````searchfor<-c(2,4,7)
replacewith<-c(2,4,3)

# generate multiplier column
# q could also be an existing vector where you want to replace certain entries
q<-rep(1,nrow(z))
#
id<-match(z\$x,searchfor)
id<-replacewith[id]
# Apply the matches to q
q[!is.na(id)]<-id[!is.na(id)]
# apply to t
z\$q<-q*z\$t
``````
-

I really liked the answer "dinre" posted to flodel's blog:

``````for (i in 1:length(data_Array)){
data_Array[i] <- switch(data_Array[i], banana="apple", orange="pineapple", "fig")
}
``````

With warnings about reading the help page for `switch` carefully for integer arguments.

-

You can do it in

• base R
• with one line
• in which the mapping is pretty clear to read in the code
• no helper functions (ok, an anonymous function)
• approach works with negatives
• approach works with any atomic vector (reals, characters)

like this:

``````> transform(z,q=t*sapply(as.character(x),function(x) switch(x,"2"=2,"4"=4,"7"=3,1)))
x  y  t  q
1   1 11 21 21
2   2 12 22 44
3   3 13 23 23
4   4 14 24 96
5   5 15 25 25
6   6 16 26 26
7   7 17 27 81
8   8 18 28 28
9   9 19 29 29
10 10 20 30 30
``````
-

Here's a version of an SQL `decode` in R for character vectors (untested with factors) that operates just like the SQL version. i.e. it takes an arbitrary number of target/replacement pairs, and optional last argument that acts as a default value (note that the default won't overwrite NAs).

I can see it being pretty useful in conjunction with `dplyr`'s `mutate` operation.

``````> x <- c("apple","apple","orange","pear","pear",NA)

> decode(x, apple, banana)
[1] "banana" "banana" "orange" "pear"   "pear"   NA

> decode(x, apple, banana, fruit)
[1] "banana" "banana" "fruit"  "fruit"  "fruit"  NA

> decode(x, apple, banana, pear, passionfruit)
[1] "banana"       "banana"       "orange"       "passionfruit" "passionfruit" NA

> decode(x, apple, banana, pear, passionfruit, fruit)
[1] "banana"       "banana"       "fruit"        "passionfruit" "passionfruit" NA
``````

Here's the code I'm using, with a gist I'll keep up to date here (link).

``````decode <- function(x, ...) {

args <- as.character((eval(substitute(alist(...))))

replacements <- args[1:length(args) %% 2 == 0]
targets      <- args[1:length(args) %% 2 == 1][1:length(replacements)]

if(length(args) %% 2 == 1)
x[! x %in% targets & ! is.na(x)] <- tail(args,1)

for(i in 1:length(targets))
x <- ifelse(x == targets[i], replacements[i], x)

return(x)

}
``````
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