I want to cluster data, coming from Twitter. I have users and their distances. I can not use K-means because k-means doesn't support clustering in metric spaces. Is there an implementation for clustering in metric spaces?
Seriously, get a book on cluster analysis.
There must be hundreds of clustering algorithms, many of which work on arbitrary spaces where you have some notion of similarity. As long as your notion of similarity is good, they can cluster the data. Most of the time they fail, your similarity doesn't work in the first place.
Anyway, your question is too broad to get you a good answer. You need to just try some of these hundred algorithms yourself.
Have you looked at using hierarchical clustering for this problem?
Also here are a bunch of lectures on Clustering in metric spaces that might help: Clustering Large Datasets in Arbitrary Metric Spaces
Here are some clustering packages for java:
There was a question asked over on Cross Validation that might help, they are not using java but the solution they provided might help:Clustering with a distance matrix