Theoretical Grounding for Estimation in Conditional Independence Multivariate Finite Mixture Models
Statistics Theory
2015-10-29 v2 Statistics Theory
Abstract
For the nonparametric estimation of multivariate finite mixture models with the conditional independence assumption, we propose a new formulation of the objective function in terms of penalized smoothed Kullback-Leibler distance. The nonlinearly smoothed majorization-minimization (NSMM) algorithm is derived from this perspective. An elegant representation of the NSMM algorithm is obtained using a novel projection-multiplication operator, a more precise monotonicity property of the algorithm is discovered, and the existence of a solution to the main optimization problem is proved for the first time.
Cite
@article{arxiv.1504.04901,
title = {Theoretical Grounding for Estimation in Conditional Independence Multivariate Finite Mixture Models},
author = {Xiaotian Zhu and David R. Hunter},
journal= {arXiv preprint arXiv:1504.04901},
year = {2015}
}
Comments
21 pages, 1 figure