An open toolbox for the reduction, inference computation and sensitivity analysis of Credal Networks

Volume: 115, Pages: 126 - 148
Published: Jan 1, 2018
Abstract
Bayesian Networks are a flexible and intuitive tool associated with a robust mathematical background. They have attracted increasing interest in a large variety of applications in different fields. In spite of this, inference in traditional Bayesian Networks is generally limited to only discrete variables or to probabilistic distributions (adopting approximate inference algorithms) that cannot fully capture the epistemic imprecision of the data...
Paper Details
Title
An open toolbox for the reduction, inference computation and sensitivity analysis of Credal Networks
Published Date
Jan 1, 2018
Volume
115
Pages
126 - 148
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