ROBUST BAYESIAN EXPERIMENTAL-DESIGNS IN NORMAL LINEAR-MODELS

成果类型:
Article
署名作者:
DASGUPTA, A; STUDDEN, WJ
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/aos/1176348247
发表日期:
1991
页码:
1244-1256
关键词:
priors
摘要:
We address the problem of finding a design that minimizes the Bayes risk with respect to a fixed prior subject to being robust with respect to misspecification of the prior. Uncertainty in the prior is formulated in terms of having a family of priors instead of one single prior. Two different classes of priors are considered: GAMMA-1 is a family of conjugate priors, and a second family of priors GAMMA-2 is induced by a metric on the space of nonnegative measures. The family GAMMA-1 has earlier been suggested by Leamer and Polasek, while GAMMA-2 was considered by DeRobertis and Hartigan and Berger. The setup assumed is that of a canonical normal linear model with independent homoscedastic errors. Optimal robust designs are considered for the problem of estimating the vector of regression coefficients or a linear combination of the regression coefficients and also for testing and set estimation problems. Concrete examples are given for polynomial regression and completely randomized designs. A very surprising finding is that for GAMMA-2, the same design is optimal for a variety of different problems with different loss structures. In general, the results for GAMMA-2 are significantly more substantive. Our results are applicable to group decision making and reconciliation of opinions among experts with different priors.