# In R, is there a simple way to convert two data frame columns for a formula with a grouping factor?

I have two vectors -- really columns in a data table -- and I want to compare the means with wilcox_test from coin.

With wilcox.test or t.test I can just do this:

wilcox.test(data\$x,data\$y)

But I need to use wilcox_test, which requires a formula like this:

wilcox_test(outcome ~ grp, data=myData)

I came up with this solution, which works:

outcome <- c(data\$x,data\$y)
grp <- c(c(rep(0, length(data\$x))),c(rep(1, length(data\$y))))
grp <-  as.factor(grp)
wilcox_test(outcome ~ grp)

But I'm wondering - is there a simpler way to do this? Or is this the best way?

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Your solution is just fine. An alternative is something like stack(data.frame(x,y)) or using the reshape command. –  Michael Mayer Dec 6 '13 at 9:41
I generally use stack, I think it's the easiest way, but there are many ways to do it. –  Glen_b Dec 6 '13 at 10:39

You can use stack. Here is an example

dat <- data.frame(x = 1:3, y = 4:6)

#   x y
# 1 1 4
# 2 2 5
# 3 3 6

dat2 <- stack(dat)

#   values ind
# 1      1   x
# 2      2   x
# 3      3   x
# 4      4   y
# 5      5   y
# 6      6   y

Now, the outcome variable is in column values and the grouping variable is in column ind.

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You can use function melt from the package reshape2:

> library(reshape2)
> melt(data.frame(x=1:10,y=11:20))
Using  as id variables
variable value
1         x     1
2         x     2
3         x     3
4         x     4
5         x     5
6         x     6
7         x     7
8         x     8
9         x     9
10        x    10
11        y    11
12        y    12
13        y    13
14        y    14
15        y    15
16        y    16
17        y    17
18        y    18
19        y    19
20        y    20

And then use wilcox_test(value ~ variable,data=melt(data.frame(x=1:10,y=11:20)))

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I'm leaning towards using stack suggested in another answer, because it's a base R function and as far as I can tell it does exactly the same thing in my case, without needing to include another package. It seems like melt is needed when you have more columns. Is there some reason to use melt over stack in this case? –  paul Dec 6 '13 at 20:13