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UAI
1996

Learning Bayesian Networks with Local Structure

13 years 5 months ago
Learning Bayesian Networks with Local Structure
In this paper we examine a novel addition to the known methods for learning Bayesian networks from data that improves the quality of the learned networks. Our approach explicitly represents and learnsthe local structurein the conditional probability tables (CPTs), that quantify these networks. This increases the space of possible models, enabling the representation of CPTs with a variable number of parameters that depends on the learned local structures. The resulting learning procedure is capable of inducing models that better emulate the real complexity of the interactions present in the data. We describe the theoretical foundations and practical aspects of learning local structures, as well as an empirical evaluation of the proposed method. This evaluation indicates that learning curves characterizing the procedure that exploits the local structure converge faster than these of the standard procedure. Our results also show that networks learned with local structure tend to be more ...
Nir Friedman, Moisés Goldszmidt
Added 02 Nov 2010
Updated 02 Nov 2010
Type Conference
Year 1996
Where UAI
Authors Nir Friedman, Moisés Goldszmidt
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