2023
DOI: 10.1613/jair.1.14044
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Automatically Finding the Right Probabilities in Bayesian Networks

Bahare Salmani,
Joost-Pieter Katoen

Abstract: This paper presents alternative techniques for inference on classical Bayesian networks in which all probabilities are fixed, and for synthesis problems when conditional probability tables (CPTs) in such networks contain symbolic parameters rather than concrete probabilities. The key idea is to exploit probabilistic model checking as well as its recent extension to parameter synthesis techniques for parametric Markov chains. To enable this, the Bayesian networks are transformed into Markov chains and their obj… Show more

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Cited by 1 publication
(2 citation statements)
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References 92 publications
(154 reference statements)
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“…Beyond Markov models, probabilistic graphical models in general and Bayesian networks in particular are widespread to describe complex conditional probability distributions. Recent work [72,73] shows that ideas and methods for parameter synthesis in Markov chains as described in this survey significantly improve upon existing methods for parametric Bayesian networks [21]. Vice versa, some inference techniques do yield interesting alternatives for the analysis of (finite-horizon properties in) pMCs [46].…”
Section: Epiloguementioning
confidence: 96%
See 1 more Smart Citation
“…Beyond Markov models, probabilistic graphical models in general and Bayesian networks in particular are widespread to describe complex conditional probability distributions. Recent work [72,73] shows that ideas and methods for parameter synthesis in Markov chains as described in this survey significantly improve upon existing methods for parametric Bayesian networks [21]. Vice versa, some inference techniques do yield interesting alternatives for the analysis of (finite-horizon properties in) pMCs [46].…”
Section: Epiloguementioning
confidence: 96%
“…There can be substantial differences between the heuristics for candidate generation, especially in settings where single region verification calls are expensive. To indicate the scalability of the approach, we report on some recent experiments [73] on parametric Bayesian networks. Figure 12 shows that 80-90% of the 8-dimensional parameter space for three parametric Bayesian networks (win95pts, hailfinder, and hepar-2) can be covered in about 100-1,000 s.…”
Section: How To Split Regions?mentioning
confidence: 99%