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ICML
1996
IEEE

Learning Goal Oriented Bayesian Networks for Telecommunications Risk Management

14 years 12 months ago
Learning Goal Oriented Bayesian Networks for Telecommunications Risk Management
This paper discusses issues related to Bayesian network model learning for unbalanced binary classification tasks. In general, the primary focus of current research on Bayesian network learning systems (e.g., K2 and its variants) is on the creation of the Bayesian network structure that fits the database best. It turns out that when applied with a specific purpose in mind, such as classification, the performance of these network models may be very poor. We demonstrate that Bayesian network models should be created to meet the specific goal or purpose intended for the model. We first present a goal-oriented algorithm for constructing Bayesian networks for predicting uncollectibles in telecommunications riskmanagement datasets. Second, we argue and demonstrate that current Bayesian network learning methods may fail to perform satisfactorily in real life applications since they do not learn models tailored to a specific goal or purpose. Third, we discuss the performance of "goal ori...
Kazuo J. Ezawa, Moninder Singh, Steven W. Norton
Added 17 Nov 2009
Updated 17 Nov 2009
Type Conference
Year 1996
Where ICML
Authors Kazuo J. Ezawa, Moninder Singh, Steven W. Norton
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