Stein's method is a collection of tools for analysing distributional comparisons through the study of a class of linear operators called Stein operators. Originally studied in probability, Stein's method has also enabled some important developments in statistics. This early success has led to a high research activity in this area in recent years. The goal of this survey is to bring together some of these developments in theoretical statistics as well as in computational statistics and, in doing so, to stimulate further research into the successful field of Stein's method and statistics. The topics we discuss include: explicit error bounds for asymptotic approximations of estimators and test statistics, a measure of prior sensitivity in Bayesian statistics, tools to benchmark and compare sampling methods such as approximate Markov chain Monte Carlo, deterministic alternatives to sampling methods, control variate techniques, and goodness-of-fit testing.
翻译:Stein的方法是通过研究一类线性操作者“Stein操作者”来分析分布性比较的工具集成。 最初在概率上研究过, Stein的方法也促成了统计方面的一些重要发展。 这一早期成功导致近年来在这一领域开展了大量的研究活动。 本调查的目的是汇集理论统计和计算统计方面的一些发展,从而进一步推动对Stein方法和统计的成功领域进行研究。 我们讨论的专题包括:对估计者和测试统计数据的无症状近似值和测试统计数据的明显错误界限,这是巴耶斯统计中一种先前敏感度的尺度,用以衡量和比较取样方法的工具,例如Markov链子的近似点、Monte Carlo、采样方法的决定性替代方法、控制变异技术和良好测试。