Abstract
Suppose that several independent experiments are observed, each one yielding a likelihood L k (θ k ) for a real-valued parameter of interest θ k . For example, θ k might be the log-odds ratio for a 2 × 2 table relating to the kth population in a series of medical experiments. This article concerns the following empirical Bayes question: How can we combine all of the likelihoods L k to get an interval estimate for any one of the θ k 's, say θ1? The results are presented in the form of a realistic computational scheme that allows model building and model checking in the spirit of a regression analysis. No special mathematical forms are required for the priors or the likelihoods. This scheme is designed to take advantage of recent methods that produce approximate numerical likelihoods L k (θ k ) even in very complicated situations, with all nuisance parameters eliminated. The empirical Bayes likelihood theory is extended to situations where the θ k 's have a regression structure as well as an empiri...

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