Sciweavers

EKAW
2006
Springer

Iterative Bayesian Network Implementation by Using Annotated Association Rules

14 years 3 months ago
Iterative Bayesian Network Implementation by Using Annotated Association Rules
Abstract. This paper concerns the iterative implementation of a knowledge model in a data mining context. Our approach relies on coupling a Bayesian network design with an association rule discovery technique. First, discovered association rule relevancy isenhanced by exploiting the expert knowledge encoded within a Bayesian network, i.e., avoiding to provide trivial rules w.r.t. known dependencies. Moreover, the Bayesian network can be updated thanks to an expert-driven annotation process on computed association rules. Our approach is experimentally validated on the Asia benchmark dataset.
Clément Fauré, Sylvie Delprat, Jean-
Added 22 Aug 2010
Updated 22 Aug 2010
Type Conference
Year 2006
Where EKAW
Authors Clément Fauré, Sylvie Delprat, Jean-François Boulicaut, Alain Mille
Comments (0)