FPDclustering:PD-Clustering and Related Methods
Probabilistic distance clustering (PD-clustering) is an iterative, distribution-free, probabilistic clustering method.
PD-clustering assigns units to a cluster according to their
probability of membership under the constraint that the product
of the probability and the distance of each point to any
cluster center is a constant. PD-clustering is a flexible
method that can be used with elliptical clusters, outliers, or
noisy data. PDQ is an extension of the algorithm for clusters
of different sizes. GPDC and TPDC use a dissimilarity measure
based on densities. Factor PD-clustering (FPDC) is a factor
clustering method that involves a linear transformation of
variables and a cluster optimizing the PD-clustering criterion.
It works on high-dimensional data sets.