IMPORTANCE-WEIGHTED MARGINAL BAYESIAN POSTERIOR DENSITY-ESTIMATION
成果类型:
Article
署名作者:
CHEN, MH
刊物名称:
JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION
ISSN/ISSBN:
0162-1459
DOI:
10.2307/2290907
发表日期:
1994
页码:
818-824
关键词:
DISTRIBUTIONS
摘要:
Markov chain sampling schemes generate dependent observations {Theta(i), 0 less than or equal to i less than or equal to n} from a full joint posterior distribution pi(theta\data). Frequently, only certain marginals of this full posterior density are of interest; thus an interesting problem is how to estimate the marginal posterior densities based on the dependent observations {Theta(i), 0 less than or equal to i less than or equal to n} from pi(theta\data). We propose a new importance-weighted marginal density estimation (IWMDE) method. An IWMDE is obtained by averaging many dependent observations of the ratio of the full joint posterior densities multiplied by a weighting conditional density w. The asymptotic properties for the IWMDE and the guidelines for choosing a weighting conditional density,v are also considered. A bivariate normal model and a constrained linear multiple regression model are used to illustrate how to derive the IWMDE's for the marginal posterior densities.