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
In extending Stein's method to new target distributions, the first step is to find a Stein operator ...
An important task in machine learning and statistics is the approximation of a probability measure b...
This article deals with Stein characterizations of probability distributions. We provide a general f...
Stein's method compares probability distributions through the study of a class of linear operators ...
Stein’s method compares probability distributions through the study of a class of linear operators c...
We propose a new general version of Stein's method for univariate distributions. In particular we pr...
We propose a new general version of Stein's method for univariate distributions. In particular we pr...
2013-07-31We look at the background of Stein's Method, its ties with the field of Markov Chains, and...
peer reviewedWe propose a new general version of Stein's method for univariate distributions. In par...
Stein's method is a powerful tool for proving central limit theorems along with explicit error bound...
peer reviewedWe propose a new general version of Stein's method for univariate distributions. In par...
We propose a new general version of Stein's method for univariate distributions. In particular we pr...
This thesis can be divided into two parts. In the first part (Chapter 2) we apply Stein's method in ...
This thesis can be divided into two parts. In the first part (Chapter 2) we apply Stein's method in ...
2018-10-15Stein's method is nowadays one of the most powerful methods to prove limit theorems in pro...
In extending Stein's method to new target distributions, the first step is to find a Stein operator ...
An important task in machine learning and statistics is the approximation of a probability measure b...
This article deals with Stein characterizations of probability distributions. We provide a general f...
Stein's method compares probability distributions through the study of a class of linear operators ...
Stein’s method compares probability distributions through the study of a class of linear operators c...
We propose a new general version of Stein's method for univariate distributions. In particular we pr...
We propose a new general version of Stein's method for univariate distributions. In particular we pr...
2013-07-31We look at the background of Stein's Method, its ties with the field of Markov Chains, and...
peer reviewedWe propose a new general version of Stein's method for univariate distributions. In par...
Stein's method is a powerful tool for proving central limit theorems along with explicit error bound...
peer reviewedWe propose a new general version of Stein's method for univariate distributions. In par...
We propose a new general version of Stein's method for univariate distributions. In particular we pr...
This thesis can be divided into two parts. In the first part (Chapter 2) we apply Stein's method in ...
This thesis can be divided into two parts. In the first part (Chapter 2) we apply Stein's method in ...
2018-10-15Stein's method is nowadays one of the most powerful methods to prove limit theorems in pro...
In extending Stein's method to new target distributions, the first step is to find a Stein operator ...
An important task in machine learning and statistics is the approximation of a probability measure b...
This article deals with Stein characterizations of probability distributions. We provide a general f...