Weighted Positive Binary Decision Diagrams for Exact Probabilistic Inference

10/18/2016
by   Giso H. Dal, et al.
0

Recent work on weighted model counting has been very successfully applied to the problem of probabilistic inference in Bayesian networks. The probability distribution is encoded into a Boolean normal form and compiled to a target language, in order to represent local structure expressed among conditional probabilities more efficiently. We show that further improvements are possible, by exploiting the knowledge that is lost during the encoding phase and incorporating it into a compiler inspired by Satisfiability Modulo Theories. Constraints among variables are used as a background theory, which allows us to optimize the Shannon decomposition. We propose a new language, called Weighted Positive Binary Decision Diagrams, that reduces the cost of probabilistic inference by using this decomposition variant to induce an arithmetic circuit of reduced size.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/19/2020

Tractable Inference in Credal Sentential Decision Diagrams

Probabilistic sentential decision diagrams are logic circuits where the ...
research
11/29/2018

Scaling up Probabilistic Inference in Linear and Non-Linear Hybrid Domains by Leveraging Knowledge Compilation

Weighted model integration (WMI) extends weighted model counting (WMC) i...
research
11/09/2022

Combinatorics of Reduced Ordered Binary Decision Diagrams: Application to uniform random sampling

Since three decades binary decision diagrams, representing efficiently B...
research
02/06/2013

Object-Oriented Bayesian Networks

Bayesian networks provide a modeling language and associated inference a...
research
01/16/2014

Exploiting Structure in Weighted Model Counting Approaches to Probabilistic Inference

Previous studies have demonstrated that encoding a Bayesian network into...
research
06/19/2023

Scalable Probabilistic Routes

Inference and prediction of routes have become of interest over the past...
research
05/17/2022

DPO: Dynamic-Programming Optimization on Hybrid Constraints

In Bayesian inference, the most probable explanation (MPE) problem reque...

Please sign up or login with your details

Forgot password? Click here to reset