Thesis (Ph. D.)--University of Washington, 1991The method of bootstrapping, which has transformed the theory and practice of frequentist statistical inference, is applicable within the Bayesian paradigm. Rather than simulating data that might have been observed, this Bayesian extension, called the weighted likelihood bootstrap, involves simulating parameters corresponding to distributions that might have generated the observed data. The weighted likelihood bootstrap is an extension of earlier work by D. Rubin (Annals of Statistics, 1981) from purely nonparametric models into semi and fully parametric models for data. The resulting simulation, which is viewed as simply a Monte Carlo approximation to a posterior distribution of interest, has ...