Because of vectorization in R, using `==`

wouldn't really work for your example. What you should use is `setdiff`

or `is.element`

(the latter of which is equivalent to `%in%`

).

```
set.seed(1)
a<-1:100
b<-sample(1:100,80)
a[!is.element(a, b)]
# [1] 8 15 33 48 52 54 56 66 68 72 74 80 90 91 92 93 94 96 98 100
setdiff(a, b)
# [1] 8 15 33 48 52 54 56 66 68 72 74 80 90 91 92 93 94 96 98 100
```

If you look at how `==`

works when you are comparing two vectors, it compares these one pair at a time, and recycles shorter vectors whenever necessary. In the first example of `x == y`

, it seemed to work correctly, but look on to the second example, `x == z`

. This basically checked to see whether `x[1] == z[1]`

, `x[2] == z[2]`

, and so on, so immediately, there was a misalignment of the sets.

```
x <- 1:10
y <- 1:5
z <- c(1, 3, 5, 7, 9)
x == y
# [1] TRUE TRUE TRUE TRUE TRUE FALSE FALSE FALSE FALSE FALSE
x == z
# [1] TRUE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE
x %in% z
# [1] TRUE FALSE TRUE FALSE TRUE FALSE TRUE FALSE TRUE FALSE
```

In R lingo, `%in%`

is very common for identifying the common elements, and then negating that with `!`

, but I find `setdiff`

to be (at least more linguistically) logical.

`==`

is for logical comparison,`!=`

is for the negation... notice the single`=`

in the second. – Justin Aug 27 '13 at 14:10`setdiff`

perhaps. – Ananda Mahto Aug 27 '13 at 14:11`R`

is not`PHP`

! – sgibb Aug 27 '13 at 14:15