Entropies and rates of convergence for maximum likelihood and Bayes estimation for mixtures of normal densities
成果类型:
Article
署名作者:
Ghosal, S; Van der Vaart, AW
署名单位:
University of Minnesota System; University of Minnesota Twin Cities; Vrije Universiteit Amsterdam
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
发表日期:
2001
页码:
1233-1263
关键词:
Consistency
摘要:
We study the rates of convergence of the maximum likelihood estimator (MLE) and posterior distribution in density estimation problems, where the densities are location or location-scale mixtures of normal distributions with the scale parameter lying between two positive numbers. The true density is also assumed to lie in this class with the true mixing distribution either compactly supported or having sub-Gaussian tails. We obtain bounds for Hellinger bracketing entropies for this class, and from these bounds, we deduce the convergence rates of (sieve) MLEs in Hellinger distance. The rate turns out to be (log n)(kappa)/rootn, where kappagreater than or equal to1 is a constant that depends on the type of mixtures and the choice of the sieve. Next, we consider a Dirichlet mixture of normals as a prior on the unknown density. We estimate the prior probability of a certain Kullback-Leibler type neighborhood and then invoke a general theorem that computes the posterior convergence rate in terms the growth rate of the Hellinger entropy and the concentration rate of the prior. The posterior distribution is also seen to converge at the rate (log n)(kappa)/rootn in, where kappa now depends on the tail behavior of the base measure of the Dirichlet process.