This might be a bit of a retread, since others already linked the wiki article of the actual cluster number determination, but I found that article a lil overly dense, so I thought I'd provide a brief, intuitive answer:

Basically, there isn't a universally 'correct' answer for the number of clusters in a data set -- the fewer clusters, the smaller the description length but the higher the variance, and in all non-trivial datasets the variance won't completely go away unless you have a Gaussian for each point, which renders the clustering useless (this is a case of the more general phenomena known as the 'futility of bias free learning': A learner that makes no a priori assumptions regarding the identity of the target concept has no rational basis for classifying any unseen instances).

So you basically have to pick some feature of your dataset to maximize via the number of clusters (see the wiki article on inductive bias for some example features)

In other sad news, in all such cases finding the number of clusters is known to be NP-hard, so the best you can expect is a good heuristic approach.

`kmeans`

function, if you have the stats toolbox. – r.m. Jun 29 '11 at 19:33`DBSCAN`

or`OPTICS`

instead of old k-means with the difficult to set`k`

parameter. – Anony-Mousse Jan 8 '12 at 11:29