Title of article :
Learning Bayesian network parameters from small data sets: application of Noisy-OR gates Original Research Article
Author/Authors :
Agnieszka Oni?ko، نويسنده , , Marek J. Druzdzel، نويسنده , , Hanna Wasyluk، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Abstract :
Existing data sets of cases can significantly reduce the knowledge engineering effort required to parameterize Bayesian networks. Unfortunately, when a data set is small, many conditioning cases are represented by too few or no data records and they do not offer sufficient basis for learning conditional probability distributions. We propose a method that uses Noisy-OR gates to reduce the data requirements in learning conditional probabilities. We test our method on Hepar II, a model for diagnosis of liver disorders, whose parameters are extracted from a real, small set of patient records. Diagnostic accuracy of the multiple-disorder model enhanced with the Noisy-OR parameters was 6.7% better than the accuracy of the plain multiple-disorder model and 14.3% better than a single-disorder diagnosis model.
Keywords :
Bayesian network , Noisy-OR gate , Learning conditional probability distributions
Journal title :
International Journal of Approximate Reasoning
Journal title :
International Journal of Approximate Reasoning