In R you can use all sorts of metrics to build a distance matrix prior to clustering, e.g. binary distance, Manhattan distance, etc... However, when it comes to choosing a linkage method (complete, average, single, etc...), these linkage all use euclidean distance. This does not seem particularly appropriate if you rely on a difference metric to build the distance matrix.
Is there a way (or a library...) to apply other distances to linkage methods when building a clustering tree?
Thanks!
hclust
use the non-standard distance also for these calculations?hclust
given that it operates on the distance matrix rather than on the data matrix?