The likelihood function is central to both frequentist and Bayesian formulations of parametric statistical inference, and large-sample approximations to the sampling distributions of estimators and test statistics, and to posterior densities, are widely used in practice. Improved approximations have been widely studied and can provide highly accurate inferences when samples are small or there are many nuisance parameters. This article reviews improved approximations based on the tangent exponential model developed in a series of articles by D.~A.~S.~Fraser and co-workers, attempting to explain the theoretical basis of this model and to provide a guide to the associated literature, including a partially-annotated bibliography.
翻译:这一可能性功能对于常年和巴耶斯的参数统计推断的配方至关重要,而且在实践中广泛使用与估计和试验统计数字的抽样分布和后表密度的大样近似值,对改进近似值进行了广泛研究,在样品小或有许多扰动参数时,可以提供非常准确的推论,本文章根据D.~A.~S.~Fraser和同事在一系列文章中开发的相近指数模型审查改进近近似值,试图解释这一模型的理论基础,并为相关文献提供指导,包括一份部分注解的文献目录。