Abstract: We consider problems to classify data represented as discrete probability distributions. For the classification
we propose the Voronoi partition technique with respect to -divergence, which is a statistically justified pseudo-
distance on the space of probability distributions. In order to improve computational efficiency and performance of
the classification, we introduce two nonlinear transformations respectively called the escort and projective transform,
and weighted -centroids. Finally we demonstrate performances of the proposed tools via simple numerical
examples.
Keywords: -divergence, -Voronoi partition, Escort transformation, Projective transformation
ACM Classification Keywords: I.3.5 Computational Geometry and Object Modeling
MSC: 53A15, 68T10
Link:
GEOMETRICAL TOOLS FOR ALPHA-VORONOI PARTITIONS
Atsumi Ohara and Yuya Nagatani
http://www.foibg.com/ibs_isc/ibs-25/ibs-25-p17.pdf