AIMay 29, 2021

Fine-Tuning the Odds in Bayesian Networks

arXiv:2105.14371v310 citations
Originality Incremental advance
AI Analysis

This work addresses limitations in existing methods for parametric Bayesian networks, enabling more flexible parameter analysis for researchers and practitioners in probabilistic modeling.

The paper tackles the problem of analyzing parametric Bayesian networks with multiple dependent symbolic parameters in conditional probability tables, and demonstrates that their tool can handle several hundreds of parameters in experiments.

This paper proposes various new analysis techniques for Bayes networks in which conditional probability tables (CPTs) may contain symbolic variables. The key idea is to exploit scalable and powerful techniques for synthesis problems in parametric Markov chains. Our techniques are applicable to arbitrarily many, possibly dependent parameters that may occur in various CPTs. This lifts the severe restrictions on parameters, e.g., by restricting the number of parametrized CPTs to one or two, or by avoiding parameter dependencies between several CPTs, in existing works for parametric Bayes networks (pBNs). We describe how our techniques can be used for various pBN synthesis problems studied in the literature such as computing sensitivity functions (and values), simple and difference parameter tuning, ratio parameter tuning, and minimal change tuning. Experiments on several benchmarks show that our prototypical tool built on top of the probabilistic model checker Storm can handle several hundreds of parameters.

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