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US Patent 7251636 Scalable methods for learning Bayesian networks

Patent 7251636 was granted and assigned to Microsoft on July, 2007 by the United States Patent and Trademark Office.

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Patent
Patent

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Current Assignee
Microsoft
Microsoft
Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
Patent Number
7251636
Date of Patent
July 31, 2007
Patent Application Number
10732074
Date Filed
December 10, 2003
Patent Citations Received
‌
US Patent 11790258 Generation of a bayesian network
Patent Primary Examiner
‌
Anthony Knight
Patent 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.

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