Scalable methods for learning Bayesian networks

Data processing: artificial intelligence – Machine learning

Reexamination Certificate

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Reexamination Certificate

active

10732074

ABSTRACT:
The present invention leverages scalable learning methods to efficiently obtain a Bayesian network for a set of variables of which the total ordering in a domain is known. Certain criteria are employed to generate a Bayesian network which is then evaluated and utilized as a guide to generate another Bayesian network for the set of variables. Successive iterations are performed utilizing a prior Bayesian network as a guide until a stopping criterion is reached, yielding a best-effort Bayesian network for the set of variables.

REFERENCES:
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patent: 6360224 (2002-03-01), Chickering
patent: 6529888 (2003-03-01), Heckerman et al.
patent: 6904408 (2005-06-01), McCarthy et al.
Shulin Yang & Kuo-Chu Chang; Comparison of Score Metrics for Bayesian Network Learning, IEEE Transactions on Systems, Man and Cybernetics—Part A: Systems and Humans, vol. 32, No. 3, May 2002, pp. 419-428.
Geoff Hulten, David Maxwell Chickering and David Heckerman, Learning Bayesian Networks From Dependency Networks: A Preliminary Study, Proceedings of the 9th International Workshop on Artificial Intelligence and Statistics, Jan. 3-6, 2003, 8pgs, Key West, FL.
David Heckerman, “A Tutorial on Learning With Bayesian Networks”, Microsoft Research, Mar. 1995, Revised 1996, 57 pages.
Andrew Moore and Mary Soon Lee, “Cached Sufficient Statistics for Efficient Machine Learning with Large Datasets”, 1998, pp. 67-91.
David Heckerman, David Maxwell Chickering, Christopher Meek, Robert Rounthwaite and Carl Kadie, “Dependency Networks for Inference, Collaborative Filtering, and Data Visualization”. Microsoft Research. 2000. 32 pgs.

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