Title :
A meta-Gaussian approach to learning non-Gaussian Bayesian network structure
Author :
Zhu, Hui ; Beling, Peter A.
Author_Institution :
Dept. of Syst. Eng., Virginia Univ., Charlottesville, VA, USA
Abstract :
Most existing approaches to learning the structure of Bayesian networks assume that all variables are discrete or that all variables are continuously normally distributed. We propose a meta-Gaussian approach that is appropriate for direct learning from general, continuous variables. We first transform the original variables into standard normal variables. Under the assumption that the transformed variables are multivariate normally distributed, we then make use of existing algorithms to learn the network structure in the transformed space, and then project the results back into the original space. Preliminary experimental results show that this approach can recover the network structure, provided that the variables of the network satisfy a fundamental monotonicity property
Keywords :
Gaussian distribution; belief networks; learning (artificial intelligence); Bayesian networks; continuous variables; direct learning; directed acyclic graphs; learning; meta-Gaussian approach; monotonicity property; multivariate normally distribution; network structure recovery; nonGaussian Bayesian network structure; standard normal variables; Bayesian methods; Buildings; Computer architecture; Expert systems; Inference algorithms; Probability; Random variables; Systems engineering and theory; Testing; Uncertainty;
Conference_Titel :
Systems, Man, and Cybernetics, 2000 IEEE International Conference on
Conference_Location :
Nashville, TN
Print_ISBN :
0-7803-6583-6
DOI :
10.1109/ICSMC.2000.886399