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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?

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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".

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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
library(pvclust)
r3 <- pvclust(x)

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

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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

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