Sciweavers

IJAR
2016

Learning extended tree augmented naive structures

8 years 22 days ago
Learning extended tree augmented naive structures
This work proposes an extended version of the well-known tree-augmented naive Bayes (TAN) classifier where the structure learning step is performed without requiring features to be connected to the class. Based on a modification of Edmonds’ algorithm, our structure learning procedure explores a superset of the structures that are considered by TAN, yet achieves global optimality of the learning score function in a very efficient way (quadratic in the number of features, the same complexity as learning TANs). We enhance our procedure with a new score function that only takes into account arcs that are relevant to predict the class, as well as an optimization over the equivalent sample size during learning. These ideas may be useful for structure learning of Bayesian networks in general. A range of experiments show that we obtain models with better prediction accuracy than Naive Bayes and TAN, and comparable to the accuracy of the state-of-the-art classifier averaged one-dependence...
Cassio Polpo de Campos, Giorgio Corani, Mauro Scan
Added 04 Apr 2016
Updated 04 Apr 2016
Type Journal
Year 2016
Where IJAR
Authors Cassio Polpo de Campos, Giorgio Corani, Mauro Scanagatta, Marco Cuccu, Marco Zaffalon
Comments (0)