Improved Adaptive Rejection Metropolis Sampling Algorithms
Luca Martino, Jesse Read, David Luengo

TL;DR
This paper introduces two improved adaptive schemes for ARMS, enhancing proposal construction in MCMC methods to ensure better convergence and performance in Bayesian inference tasks.
Contribution
The paper proposes two novel adaptive schemes for ARMS that address its limitations, ensuring convergence and improving sampling efficiency.
Findings
New schemes outperform standard ARMS in numerical tests.
Proposed methods guarantee convergence to the target distribution.
Enhanced proposal construction simplifies implementation.
Abstract
Markov Chain Monte Carlo (MCMC) methods, such as the Metropolis-Hastings (MH) algorithm, are widely used for Bayesian inference. One of the most important issues for any MCMC method is the convergence of the Markov chain, which depends crucially on a suitable choice of the proposal density. Adaptive Rejection Metropolis Sampling (ARMS) is a well-known MH scheme that generates samples from one-dimensional target densities making use of adaptive piecewise proposals constructed using support points taken from rejected samples. In this work we pinpoint a crucial drawback in the adaptive procedure in ARMS: support points might never be added inside regions where the proposal is below the target. When this happens in many regions it leads to a poor performance of ARMS, with the proposal never converging to the target. In order to overcome this limitation we propose two improved adaptive…
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