A Data Mining Method For Refining Groups In Data Using Dynamic Model Based Clustering
Abstract
A new data mining method is proposed for
determining the number and structure of clusters, and refining
groups in multivariate heterogeneous data set including groups,
partly and completely overlapped group structures by using
dynamic model based clustering. It is called dynamic model
based clustering since the structure of model changes at each
stage of refinement process dynamically. The proposed data
mining method works without data reduction for high
dimensional data in which some of variables including completely
overlapped situations.