# A basic R function

In reading R for programmers I saw this function

``````oddcount <- function(x) {
k <- 0
for (n in x) {
if (n %% 2 == 1) k <- k+1
}
return(k)
}
``````

I would prefer to write it in a simpler style (i.e in lisp)

``````(defn odd-count [xs]
(count (filter odd? xs)))
``````

I see the function length is equivalent to count and I can write odd? so are there built-in map/filter/remove type functions?

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A more R way to doing this would be to avoid the `for` loop, and use vectorization:

``````oddcount <- function(x) {
sum(x %% 2)
}
``````

The comparison between `x` and 2 outputs a vector as `x` itself is a vector. Sum than calculates the sum of the vector, where `TRUE` equals 1 and `FALSE` equals zero. In this way the function calculates the number of odd numbers in the vector.

This already leads to more simple syntax, although for non-vectorization-oriented people the `for` loop tends to be easier to read. I greatly prefer the vectorized syntax as it is much shorter. I would prefer to use a more descriptive name for `x` though, e.g. `number_vector`.

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In this case it could be even shorter, you don't realy need the `==1` since `%%` will only be returning 0's and 1's. Use `sum(x %% 2)`. This might also be a little bit quicker since you are not generating logicals and ther converting them back to numeric. Some may find the longer version more readable ( and if you were to expand this to looking for numbers that are or are not multiples of something other than 2 then you would need the longer version. –  Greg Snow Jul 31 '12 at 15:41

In R, when you are working with vectors, people often prefer to work on the entire vector at once instead of looping through it (see, for example, this discussion).

In a sense, R does have "built in" filter and reduce functions: the way in which you can select subsets of a vector. They are very handy in R, and there are a few ways to go about it - I'll show you a couple, but you'll pick up more if you read about R and look at other people's code on a site like this. I would also consider looking at `?which` and `?'['`, which has more examples than I do here.

The first way is simply to select which elements you want. You can use this if you know the indices of the elements you want:

``````x <- letters[1:10]
> x
[1] "a" "b" "c" "d" "e" "f" "g" "h" "i" "j"
``````

If we only want the first five letters, we can write:

``````x[1:5]
x[c(1,2,3,4,5)] # a more explicit version of the above
``````

You can also select which elements you don't want by using a minus sign, for example:

`````` x[-(6:10)]
``````

Another way to select elements is by using a boolean vector:

``````x <- 1:5
selection <- c(FALSE, TRUE, FALSE, TRUE, FALSE)
x[selection]   # only the second and fourth elements will remain
``````

This is important because we can create such a vector by putting a vector in a comparison function:

``````selection <- (x > 3)
> selection
[1] FALSE FALSE FALSE  TRUE  TRUE

x[selection]   # select all elements of x greater than 3
x[x > 3]       # a shorthand version of the above
``````

Once again, we can select the opposite of the comparison we use (note that since it is boolean, we use `!` and not `-`):

``````x[!(x > 3)]    # select all elements less than or equal to 3
``````

If you want to do vector comparisons, you should consider the `%in%` function. For example:

``````x <- letters[1:10]
> x %in% c("d", "p", "e", "f", "y")
[1] FALSE FALSE FALSE  TRUE  TRUE  TRUE FALSE FALSE FALSE FALSE

# Select all elements of x that are also "d", "p", "e", "f", or "y"
x[x %in% c("d", "p", "e", "f", "y")]
# And to select everything not in that vector:
x[!(x %in% c("d", "p", "e", "f", "y"))]
``````

The above are only a few examples; I would definitely recommend the documentation. I know this is a long post after you have already accepted an answer, but this sort of thing is very important and understanding it is going to save you a lot of time and pain in the future if you are new to R, so I thought I'd share a couple of ways of doing it with you.

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Thanks, this is definitely helpful. –  ChrisR Jul 31 '12 at 12:31
You should take a look at the funprog library, which includes `map`, `filter`, `reduce` etc.
There is nothing wrong with use `funprog`, but using standard R you can get the same shortness in code. –  Paul Hiemstra Jul 31 '12 at 11:46