发明名称 Scalable methods for learning Bayesian networks
摘要 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.
申请公布号 US7251636(B2) 申请公布日期 2007.07.31
申请号 US20030732074 申请日期 2003.12.10
申请人 MICROSOFT CORPORATION 发明人 CHICKERING DAVID M.;HECKERMAN DAVID E.
分类号 G06F15/18;G06N7/00 主分类号 G06F15/18
代理机构 代理人
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