Coming from various other languages, I find R powerful and intuitive, but I am not thrilled with its performance. So I decided to try to improve some snippet I wrote and learn how to code better in R.

Here's a function I wrote, trying to determine if a vector is binary-valued (two distinct values or just one value) or not:

```
isBinaryVector <- function(v) {
if (length(v) == 0) {
return (c(0, 1))
}
a <- v[1]
b <- a
lapply(v, function(x) { if (x != a && x != b) {if (a != b) { return (c()) } else { b = x }}})
if (a < b) {
return (c(a, b))
} else {
return (c(b, a))
}
}
```

EDIT: This function is expected to look through a vector then return `c()`

if it is not binary-valued, and return `c(a, b)`

if it is, a being the small value and b being the larger one (if a == b then just `c(a, a)`

. E.g., for

```
A B C
1 1 1 0
2 2 2 0
3 3 1 0
```

I will `lapply`

this `isBinaryVector`

and get:

```
$A
[1] 1 1
$B
[1] 1 1
$C
[1] 0 0
```

The time it took on a moderate sized dataset (about 1800 * 3500, 2/3 of them are binary-valued) is about 15 seconds. The set contains only floating-point numbers.

Is there anyway I could do this faster?

Thanks for any inputs!

`lapply`

call isn't assigned to anything. If v is a data frame, a and b are both initially simply the first column of v. Then you test whether each column is identical to a and b (which themselves are identical) incorrectly using vectorized comparisons in an if statement. I could go on. Consider me baffled. – joran Apr 19 '12 at 14:30