Post-data statistical inference concerns making probability statements about model parameters conditional on observed data. When a priori knowledge about parameters is available, post-data inference can be conveniently made from Bayesian posteriors. In the absence of prior information, we may still rely on objective Bayes or generalized fiducial inference (GFI). Inspired by approximate Bayesian computation, we propose a novel characterization of post-data inference with the aid of differential geometry. Under suitable smoothness conditions, we establish that Bayesian posteriors and generalized fiducial distributions (GFDs) can be respectively characterized by absolutely continuous distributions supported on the same differentiable manifold: The manifold is uniquely determined by the observed data and the data generating equation of the fitted model. Our geometric analysis not only sheds light on the connection and distinction between Bayesian inference and GFI, but also allows us to sample from posteriors and GFDs using manifold Markov chain Monte Carlo algorithms. A repeated-measures analysis of variance example is presented to illustrate the sampling procedure.
翻译:数据后统计推论关注以观察数据为条件的模型参数概率说明。当事先掌握有关参数的知识时,数据后推论可以方便地从巴耶西亚后方体中得出。在缺乏先前资料的情况下,我们仍可以依赖客观的贝耶斯或一般的教育推论(GFI)。受巴伊西亚计算约近似值的启发,我们建议对数据后推论进行新颖的定性,并借助不同的几何方法。在适当的平滑条件下,我们确定巴耶西亚后方体和普遍扇形分布可分别以绝对连续的分布为特征,支持同一可差异的方程式:所观察的数据和模型生成的数据方程式决定的方形是独特的。我们的几何分析不仅说明了巴伊西亚的推断与GFI之间的联系和区别,而且还使我们能够利用马可夫-蒙特-卡洛算法从远方体和GFDs采集样本。对差异进行反复的计算分析是为了说明取样程序。