Bayesian Networks for Expert Systems: Theory and Practical Applications

@inproceedings{Wiegerinck2010BayesianNF,
  title={Bayesian Networks for Expert Systems: Theory and Practical Applications},
  author={Wim Wiegerinck and Hilbert J. Kappen and Willem Burgers},
  booktitle={Interactive Collaborative Information Systems},
  year={2010}
}
  • Wim Wiegerinck, Hilbert J. Kappen, Willem Burgers
  • Published in
    Interactive Collaborative…
    2010
  • Computer Science
  • Bayesian networks are widely accepted as models for reasoning with uncertainty. In this chapter, we focus on models that are created using domain expertise only. After a short review of Bayesian network models and common Bayesian network modeling approaches, we will discuss in more detail three applications of Bayesian networks.With these applications, we aim to illustrate the modeling power and flexibility of the Bayesian networks, which go beyond the standard textbook applications. The first… CONTINUE READING

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