Thanks for reading my blog.
Yes the distance matrix to compute is very difficult.
I have applied a minhash clustering (mahout has an implementation as well) to find vectors that are quite similar. So you don't have to compute the whole distance matrix, but that of vectors that are similar.
So my advice for you would be to use mahout's minhashing to find clusters of similar vectors. Then compute a smaller distance matrix for them and then apply the rest of the bullet points I written in my post:
- Extract adjacent points from your "mini" cluster
- Run a connected component algorithm from the resulting graph (There are implementations of it with MapReduce, Giraph and Hama)
So that is basically it. Can't open source this whole stages unfortunately, so that's what the whole procedure takes.