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Stein’s Method Meets Computational Statistics: A Review of Some Recent Developments

Andreas Anastasiou, Alessandro Barp, François‐Xavier Briol, Bruno Ebner, Robert E. Gaunt, Fatemeh Ghaderinezhad, Jackson Gorham, Arthur Gretton, Christophe Ley, Qiang Liu, Lester Mackey, Chris J. Oates, Gesine Reinert, Yvik Swan

2022Statistical Science27 citationsDOIOpen Access PDF

Abstract

Stein’s method compares probability distributions through the study of a class of linear operators called Stein operators. While mainly studied in probability and used to underpin theoretical statistics, Stein’s method has led to significant advances in computational statistics in recent years. The goal of this survey is to bring together some of these recent developments, and in doing so, to stimulate further research into the successful field of Stein’s method and statistics. The topics we discuss include tools to benchmark and compare sampling methods such as approximate Markov chain Monte Carlo, deterministic alternatives to sampling methods, control variate techniques, parameter estimation and goodness-of-fit testing.

Topics & Concepts

StatisticsComputer scienceBenchmark (surveying)Sampling (signal processing)Computational statisticsMarkov chain Monte CarloControl variatesMarkov chainMonte Carlo methodField (mathematics)EconometricsMathematicsHybrid Monte CarloGeographyComputer visionFilter (signal processing)Pure mathematicsGeodesyRandom Matrices and ApplicationsMarkov Chains and Monte Carlo MethodsBayesian Methods and Mixture Models
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