Clustering a second vector according to a clustered first vector in R

I have a vector that has been divided into two clusters (as discussed in this question):

``````    x <- c(1, 4, 5, 6, 9, 29, 32, 46, 55)
tree <- hclust(dist(x), method = "single")
split(x, cutree(tree, h = 19))
# \$`1`
# [1] 1 4 5 6 9
#
# \$`2`
# [1] 29 32 46 55
``````

Now suppose I have another cluster of the same length, which I wish to divide into the same number of clusters by the same indices as x, take the following vector y as an example:

``````    set.seed(77)
y = rnorm(9)
y
#[1] -0.54964  1.09105  0.63978  1.04258  0.16970  1.13780 -0.97055 -0.13183
#[9]  0.14623
``````

The desired result should be like this:

``````    # \$`1`
# [1] -0.54964  1.09105  0.63978  1.04258  0.16970
#
# \$`2`
# [1] 1.13780 -0.97055 -0.13183 0.14623
``````
-

Just like you did for `x`:
``````split(y, cutree(tree, h = 19))
And since you are now using `cutree(tree, h = 19)` in multiple places, you might as well assign it to a variable:
``````groups <- cutree(tree, h = 19)