Data di Pubblicazione:
2009
Abstract:
Clustering high-dimensional data is challenging. Classic metrics fail in identifying real similarities between objects. Moreover, the huge number of features makes the cluster interpretation hard. To tackle these problems, several co-clustering approaches have been proposed which try to compute a partition of objects and a partition of features simultaneously. Unfortunately, these approaches identify only a predefined number of flat co-clusters. Instead, it is useful if the clusters are arranged in a hierarchical fashion because the hierarchy provides insides on the clusters. In this paper we propose a novel hierarchical co-clustering, which builds two coupled hierarchies, one on the objects and one on features thus providing insights on both them. Our approach does not require a pre-specified number of clusters, and produces compact hierarchies because it makes n −ary splits, where n is automatically determined. We validate our approach on several high-dimensional datasets with state of the art competitors.
Tipologia CRIS:
04A-Conference paper in volume
Elenco autori:
D. Ienco; R. G. Pensa; R. Meo
Link alla scheda completa:
Titolo del libro:
Machine Learning and Knowledge Discovery in Databases, European Conference, ECML PKDD 2009, Bled, Slovenia, September 7-11, 2009, Proceedings, Part I
Pubblicato in: