Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Let's say I want to multiply each even element of a vector by 2 and each odd element of a vector by 3. Here is some code that can do this:

v <- 0:10

idx <- v %% 2 == 0
v[idx] <- v[idx] * 2
v[!idx] <- v[!idx] * 3

This would get difficult if I had more than two cases. It seems like the apply family of functions never deals with vectors so I don't know a better way to do this problem. Maybe using an apply function would work if I made transformations on the data, but it seems like that shouldn't be something that I would need to do to solve this simple problem.

Any ideas?

Edit: Sorry for the confusion. I am not specifically interested in the "%%" operator. I wanted to put some concrete code in my question, but, based on the responses to the question, was too specific. I wanted to figure out how to apply some arbitrary function to each member of the list. This was not possible with apply() and I thought sapply() only worked with lists.

share|improve this question
What would you propose? You can use things like switch for multiple cases. And you certainly can use the apply family on vectors: sapply(v, function(x) x + 1). But I don't see how you get away from using a construct like you have to identify which case things fall into... –  Justin Jan 8 '13 at 0:32
It is not clear what you mean by "if I had more than two cases". Are you looking at something that would use v %% n where n > 2? –  flodel Jan 8 '13 at 1:09
Thanks, Justin. sapply works exactly as you describe and is exactly what I want. I was looking at a tutorial of the apply family of functions and thought sapply could only take a list. –  dubois Jan 8 '13 at 20:11

4 Answers 4

up vote 2 down vote accepted

Easiest would be:

v*c(2,3) # as suggested by flodel in a comment.

The term to search for in the documentation is "argument recycling" ... a feature of the R language. Only works for dyadic infix functions (see ?Ops). For non-dyadcic vectorized functions that would not error out with some of the arguments and where you couldn't depend on the structure of "v" to be quite so regular, you could use ifelse:

ifelse( (1:length(v)) %% 2 == 0, func1(v), func2(v) )

This constructs two vectors and then chooses elements in the first or second based on the truth value of hte first argument. If you were trying to answer the question in the title of your posting then you should look at:

share|improve this answer
Thanks, using sapply like this works: sapply(v, function(x) if(x %% 2 == 0) return(x * 2) else return(x * 3)) –  dubois Jan 8 '13 at 20:18
That will be considerably slower than the first if working with larger vectors, but would have the dominating advantage that it would not depend on the arrangement of the "x" values. It's also going to be slower than what I will now suggest. ( It's a good practice to construct a testing example that is as complex as the real case.) ifelse( x %% 2 == 0, x^2, x^3 ) would be much faster than your code. –  BondedDust Jan 8 '13 at 21:57

You can do:

v <- v * c(2, 3)[v %% 2 + 1]

It is generalizable to any v %% n, e.g.:

v <- v * c(2, 3, 9, 1)[v %% 4 + 1]

Also it does not require that length(v) be a multiple of n.

share|improve this answer
Nice! You can even drop the selection if you change the order of the vector: v * c(2, 3, 9, 1)[v %% 4 + 1] == v * c(3, 9, 1, 2) –  Tyler Jan 8 '13 at 1:24
@Tyler, the selection is to avoid any warning if length(n) is not a multiple of 4 in the example you quote. –  flodel Jan 8 '13 at 1:55

You can use vector multiplication to do what you want:

tmp <- 1:10
tmp * rep(c(3,2), length(tmp)/2)

This is easy to extend to three or more cases:

tmp * rep(c(3,2,4), length(tmp)/3)
share|improve this answer
or better, use recycling: tmp * c(3,2,4). (note that both methods will warn if the length is off.) –  flodel Jan 8 '13 at 0:58

Here is an answer allowing any set of arbitrary functions to be applied to defined groups within a vector.

# source data
test <- 1:9
# categorisations of source data
cattest <- rep(1:3,each=3)
#[1] 1 1 1 2 2 2 3 3 3

Make the function to differentially apply functions:

categ <- function(x,catg) {
                 function(a,b) {
                                       a * 2,
                                       a * 3,
                                       a / 2
# where cattest = 1, multiply by 2
# where cattest = 2, multiply by 3
# where cattest = 3, divide by 2

The result:

#[1]  2.0  4.0  6.0 12.0 15.0 18.0  3.5  4.0  4.5
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.