Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm using R to perform an hierarchical clustering. As a first approach I used hclust and performed the following steps:

  1. I imported the distance matrix
  2. I used the as.dist function to transform it in a dist object
  3. I run hclust on the dist object

Here's the R code:

distm <- read.csv("distMatrix.csv")
d <- as.dist(distm)
hclust(d, "ward")

At this point I would like to do something similar with the function pvclust; however, I cannot because it's not possible to pass a precomputed dist object. How can I proceed considering that I'm using a distance not available among those provided by the dist function of R?

share|improve this question

2 Answers 2

up vote 1 down vote accepted

It's not clear to me whether you only have a distance matrix, or you computed it beforehand. In the former case, as already suggested by @Vincent, it would not be too difficult to tweak the R code of pvclust itself (using fix() or whatever; I provided some hints on another question on CrossValidated). In the latter case, the authors of pvclust provide an example on how to use a custom distance function, although that means you will have to install their "unofficial version".

share|improve this answer
I've seen the unofficial version, however I would prefer to avoid using it... After posting on stackoverflow I contacted the author of the pvclust function. This is his answer: Since pvclust uses a bootstrap-based algorithm, using precomputed dist object is impossible in principle. I'm sorry I cannot be of help. –  rlar Jan 20 '12 at 9:13

If the dataset is not too large, you can embed your n points in a space of dimension n-1, with the same distance matrix.

# Sample distance matrix
n <- 100
k <- 1000
d <- dist( matrix( rnorm(k*n), nc=k ), method="manhattan" )

# Recover some coordinates that give the same distance matrix
x <- cmdscale(d, n-1)
stopifnot( sum(abs(dist(x) - d)) < 1e-6 )

# You can then indifferently use x or d
r1 <- hclust(d)
r2 <- hclust(dist(x)) # identical to r1
r3 <- pvclust(x)

If the dataset is large, you may have to check how pvclust is implemented.

share|improve this answer
In retrospect (i.e., after having replied myself), I believe the OP really wants to pass a distance matrix to pvclust, whereas pvclust expects a data.frame or matrix object. –  chl Jan 19 '12 at 14:53
Be careful: pvclust() clusters columns, not rows, hence the good code is pvclust(t(x)), not pvclust(x) –  Stéphane Laurent Jun 12 '12 at 13:51

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.