Importance Sampling in Bayesian Networks: An Influence-Based Approximation Strategy for Importance Functions

07/04/2012
by   Changhe Yuan, et al.
0

One of the main problems of importance sampling in Bayesian networks is representation of the importance function, which should ideally be as close as possible to the posterior joint distribution. Typically, we represent an importance function as a factorization, i.e., product of conditional probability tables (CPTs). Given diagnostic evidence, we do not have explicit forms for the CPTs in the networks. We first derive the exact form for the CPTs of the optimal importance function. Since the calculation is hard, we usually only use their approximations. We review several popular strategies and point out their limitations. Based on an analysis of the influence of evidence, we propose a method for approximating the exact form of importance function by explicitly modeling the most important additional dependence relations introduced by evidence. Our experimental results show that the new approximation strategy offers an immediate improvement in the quality of the importance function.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/13/2012

Refractor Importance Sampling

In this paper we introduce Refractor Importance Sampling (RIS), an impro...
research
10/19/2012

An Importance Sampling Algorithm Based on Evidence Pre-propagation

Precision achieved by stochastic sampling algorithms for Bayesian networ...
research
06/01/2011

AIS-BN: An Adaptive Importance Sampling Algorithm for Evidential Reasoning in Large Bayesian Networks

Stochastic sampling algorithms, while an attractive alternative to exact...
research
10/25/2022

BSDF Importance Baking: A Lightweight Neural Solution to Importance Sampling General Parametric BSDFs

Parametric Bidirectional Scattering Distribution Functions (BSDFs) are p...
research
02/06/2016

Importance Sampling for Minibatches

Minibatching is a very well studied and highly popular technique in supe...
research
02/07/2018

Yes, but Did It Work?: Evaluating Variational Inference

While it's always possible to compute a variational approximation to a p...
research
10/11/2022

Neural Importance Sampling for Rapid and Reliable Gravitational-Wave Inference

We combine amortized neural posterior estimation with importance samplin...

Please sign up or login with your details

Forgot password? Click here to reset