This paper presents an innovative, adaptive variant of Kohonen’s self-organizing maps called ASOM, which is an unsupervised
clustering method that adaptively decides on the best architecture for the self-organizing map. Like the traditional SOMs,
this clustering technique also provides useful information about the relationship between the resulting clusters. Applications
of the resulting software to clustering biological data are discussed in detail.