Layered Adaptive Importance Sampling

05/18/2015
by   L. Martino, et al.
0

Monte Carlo methods represent the "de facto" standard for approximating complicated integrals involving multidimensional target distributions. In order to generate random realizations from the target distribution, Monte Carlo techniques use simpler proposal probability densities to draw candidate samples. The performance of any such method is strictly related to the specification of the proposal distribution, such that unfortunate choices easily wreak havoc on the resulting estimators. In this work, we introduce a layered (i.e., hierarchical) procedure to generate samples employed within a Monte Carlo scheme. This approach ensures that an appropriate equivalent proposal density is always obtained automatically (thus eliminating the risk of a catastrophic performance), although at the expense of a moderate increase in the complexity. Furthermore, we provide a general unified importance sampling (IS) framework, where multiple proposal densities are employed and several IS schemes are introduced by applying the so-called deterministic mixture approach. Finally, given these schemes, we also propose a novel class of adaptive importance samplers using a population of proposals, where the adaptation is driven by independent parallel or interacting Markov Chain Monte Carlo (MCMC) chains. The resulting algorithms efficiently combine the benefits of both IS and MCMC methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/06/2021

MCMC-driven importance samplers

Monte Carlo methods are the standard procedure for estimating complicate...
research
04/10/2017

Group Importance Sampling for Particle Filtering and MCMC

Importance Sampling (IS) is a well-known Monte Carlo technique that appr...
research
12/26/2020

Population Quasi-Monte Carlo

Monte Carlo methods are widely used for approximating complicated, multi...
research
10/13/2017

Parsimonious Adaptive Rejection Sampling

Monte Carlo (MC) methods have become very popular in signal processing d...
research
08/17/2013

Adaptive Independent Sticky MCMC algorithms

In this work, we introduce a novel class of adaptive Monte Carlo methods...
research
07/29/2023

Neural Classifiers based Monte Carlo simulation

Acceptance-rejection (AR), Independent Metropolis Hastings (IMH) or impo...
research
10/20/2020

Deep Importance Sampling based on Regression for Model Inversion and Emulation

Understanding systems by forward and inverse modeling is a recurrent top...

Please sign up or login with your details

Forgot password? Click here to reset