# Comparing Vector Values

`I'm wondering how I would go about altering this code so that corresponding values of both vectors cannot be equal. As an example: if x = (1, 2, 2, 4, 8, 1, 7, 9, 5, 10) and y = (3, 2, 7, 8, 4, 10, 4, 8, 2, 1), the second values for both vectors equal 2. Is there any way I can tell R to re-sample in this second spot in vector x until it is not the same value in vector y?

``````x <- c(1:10)
y <- c(1:10)
sample_x <- sample(x, length(10), replace = TRUE)
z <- sample_x > y`
``````
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`length(10)` is `1`, something odd with your code. Also `sample_x > y` doesn't make much sense. –  flodel Aug 5 '13 at 1:22
`sample_x` in the OP code is of size 1, so `sample_x > y` will check `sample_x` against every value in `y`. (I'm sure not what was intended, but will run just fine) –  Ricardo Saporta Aug 5 '13 at 1:31
I was thinking length(10) would create a vector of length 10, but I guess not. I was trying to sample 10 times from x while replacing the values. Thus, z would give me TRUE or FALSE depending on whether the value in sample_x is larger than its corresponding value in vector y. –  Ryan Caldwell Aug 5 '13 at 2:18
side note: to get a vector of length `n` integers use `seq(n)` –  Ricardo Saporta Aug 5 '13 at 2:22
So you meant `sample_x <- sample(x, 10, replace = TRUE)` and maybe `z <- sample_x == y` or `z <- any(sample_x == y)`. –  flodel Aug 5 '13 at 10:34

You could do:

``````while(any(x == y)) x <- sample(x)
``````

Edit: Now I realize `x` and `y` probably come from a similar `sample` call with `replace = TRUE`, here is an interesting approach that avoids a `while` loop. It uses indices and modulo to ensure that the two samples do not match:

``````N <- 1:10  # vector to choose from (assumes distinct values)
L <- 20    # sample size - this might be length(N) as in your example

n <- length(N)

i <- sample(n,   L, replace = TRUE)
j <- sample(n-1, L, replace = TRUE)

x <- N[i]
y <- N[1 + (i + j - 1) %% n]
``````
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very clever! +1 –  Ricardo Saporta Aug 5 '13 at 2:24
``````while (any(ind <- x==y))
x[ind] <- sample(N, sum(ind), TRUE)
``````

where `N` is what you are sampling from (or the max integer)

The advantage here is that if you do not need to resample all of `x`, then this will converge more quickly.

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You can use function permn from library combinat to generate all permutations of vector of length 10.

``````ind <- permn(10)
xy_any_equal <- sapply(ind, function(i) any(x[i] == y))
if(sum(xy_any_equal) < length(xy_any_equal)) x_perm <- x[head(ind[!xy_any_equal],1)[[1]]]
exists(x_perm)
``````
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seriously? would you recommend that over the two solutions already posted? –  flodel Aug 5 '13 at 10:49
I would not recommend it when vector is longer than 7. –  Wojciech Sobala Aug 5 '13 at 19:07