Iterative Markov Chain Monte Carlo Computation of Reference Priors and Minimax Risk

01/10/2013
by   John Lafferty, et al.
0

We present an iterative Markov chainMonte Carlo algorithm for computingreference priors and minimax risk forgeneral parametric families. Ourapproach uses MCMC techniques based onthe Blahut-Arimoto algorithm forcomputing channel capacity ininformation theory. We give astatistical analysis of the algorithm,bounding the number of samples requiredfor the stochastic algorithm to closelyapproximate the deterministic algorithmin each iteration. Simulations arepresented for several examples fromexponential families. Although we focuson applications to reference priors andminimax risk, the methods and analysiswe develop are applicable to a muchbroader class of optimization problemsand iterative algorithms.

READ FULL TEXT

page 1

page 6

research
06/17/2022

Iterative importance sampling with Markov chain Monte Carlo sampling in robust Bayesian analysis

Bayesian inference under a set of priors, called robust Bayesian analysi...
research
02/15/2022

Generalisation and the Risk–Entropy Curve

In this paper we show that the expected generalisation performance of a ...
research
10/02/2017

sgmcmc: An R Package for Stochastic Gradient Markov Chain Monte Carlo

This paper introduces the R package sgmcmc; which can be used for Bayesi...
research
10/15/2020

Orbital MCMC

Markov Chain Monte Carlo (MCMC) is a computational approach to fundament...
research
01/10/2013

Markov Chain Monte Carlo using Tree-Based Priors on Model Structure

We present a general framework for defining priors on model structure an...
research
12/31/2019

Schrödinger Bridge Samplers

Consider a reference Markov process with initial distribution π_0 and tr...
research
02/15/2021

Parallel Tempering on Optimized Paths

Parallel tempering (PT) is a class of Markov chain Monte Carlo algorithm...

Please sign up or login with your details

Forgot password? Click here to reset