POSTERIOR PREDICTIVE P-VALUES

成果类型:
Article
署名作者:
MENG, XL
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/aos/1176325622
发表日期:
1994
页码:
1142-1160
关键词:
multiply-imputed data tests
摘要:
Extending work of Rubin, this paper explores a Bayesian counterpart of the classical p-value, namely, a tail-area probability of a ''test statistic'' under a null hypothesis. The Bayesian formulation, using posterior predictive replications of the data, allows a ''test statistic'' to depend on both data and unknown (nuisance) parameters and thus permits a direct measure of the discrepancy between sample and population quantities. The tail-area probability for a ''test statistic'' is then found under the joint posterior distribution of replicate data and the (nuisance) parameters, both conditional on the null hypothesis. This posterior predictive p-value can also be viewed as the posterior mean of a classical p-value, averaging over the posterior distribution of(nuisance) parameters under the null hypothesis, and thus it provides one general method for dealing with nuisance parameters. Two classical examples, including the Behrens-Fisher problem, are used to illustrate the posterior predictive p-value and some of its interesting properties, which also reveal a new (Bayesian) interpretation for some classical p-values. An application to multiple-imputation inference is also presented. A frequency evaluation shows that, in general, if the replication is defined by new (nuisance) parameters and new data, then the Type I frequentist error of an alpha-level posterior predictive test is often close to but less than alpha and will never exceed 2 alpha.