Sciweavers

AUSAI
2005
Springer

Ensemble Selection for SuperParent-One-Dependence Estimators

13 years 10 months ago
Ensemble Selection for SuperParent-One-Dependence Estimators
SuperParent-One-Dependence Estimators (SPODEs) loosen Naive-Bayes’ attribute independence assumption by allowing each attribute to depend on a common single attribute (superparent) in addition to the class. An ensemble of SPODEs is able to achieve high classification accuracy with modest computational cost. This paper investigates how to select SPODEs for ensembling. Various popular model selection strategies are presented. Their learning efficacy and efficiency are theoretically analyzed and empirically verified. Accordingly, guidelines are investigated for choosing between selection criteria in differing contexts. Content areas Bayesian networks, machine learning Pre-publication draft of paper accepted for publication in the Proceedings of AI-2005 which will be published as Springer LNAI
Ying Yang, Kevin B. Korb, Kai Ming Ting, Geoffrey
Added 26 Jun 2010
Updated 26 Jun 2010
Type Conference
Year 2005
Where AUSAI
Authors Ying Yang, Kevin B. Korb, Kai Ming Ting, Geoffrey I. Webb
Comments (0)