Abstract:
We propose an assessing method of mixture model in a cluster analysis setting with integrated completed likelihood. For this purpose, the observed data are assigned to un...Show MoreMetadata
Abstract:
We propose an assessing method of mixture model in a cluster analysis setting with integrated completed likelihood. For this purpose, the observed data are assigned to unknown clusters using a maximum a posteriori operator. Then, the integrated completed likelihood (ICL) is approximated using the Bayesian information criterion (BIC). Numerical experiments on simulated and real data of the resulting ICL criterion show that it performs well both for choosing a mixture model and a relevant number of clusters. In particular, ICL appears to be more robust than BIC to violation of some of the mixture model assumptions and it can select a number of dusters leading to a sensible partitioning of the data.
Published in: IEEE Transactions on Pattern Analysis and Machine Intelligence ( Volume: 22, Issue: 7, July 2000)
DOI: 10.1109/34.865189
Département de Mathématiques, Universitè de ranche-Comté, UMR CNRS 6623 16, Besancon, France
INRIA-Rhoône-Alpes, Montbonnot Saint Martin, France
Département Génie Informatique,U.M.R. C.N.R.S. 6599 Heudiasyc, Universitè de Technologie de Compiègne, Compiegne, France
Département de Mathématiques, Universitè de ranche-Comté, UMR CNRS 6623 16, Besancon, France
INRIA-Rhoône-Alpes, Montbonnot Saint Martin, France
Département Génie Informatique,U.M.R. C.N.R.S. 6599 Heudiasyc, Universitè de Technologie de Compiègne, Compiegne, France