CONVERGENCE RATES OF PARAMETER ESTIMATION FOR SOME WEAKLY IDENTIFIABLE FINITE MIXTURES

Citation
Nhat Ho et Xuanlong Nguyen, CONVERGENCE RATES OF PARAMETER ESTIMATION FOR SOME WEAKLY IDENTIFIABLE FINITE MIXTURES, Annals of statistics , 44(6), 2016, pp. 2726-2755
Journal title
ISSN journal
00905364
Volume
44
Issue
6
Year of publication
2016
Pages
2726 - 2755
Database
ACNP
SICI code
Abstract
We establish minimax lower bounds and maximum likelihood convergence rates of parameter estimation for mean-covariance multivariate Gaussian mixtures, shape-rate Gamma mixtures and some variants of finite mixture models, including the setting where the number of mixing components is bounded but unknown. These models belong to what we call "weakly identifiable" classes, which exhibit specific interactions among mixing parameters driven by the algebraic structures of the class of kernel densities and their partial derivatives. Accordingly, both the minimax bounds and the maximum likelihood parameter estimation rates in these models, obtained under some compactness conditions on the parameter space, are shown to be typically much slower than the usual n-½ or n-1/4 rates of convergence.