发明名称 Dependency network based model (or pattern)
摘要 A dependency network is created from a training data set utilizing a scalable method. A statistical model (or pattern), such as for example a Bayesian network, is then constructed to allow more convenient inferencing. The model (or pattern) is employed in lieu of the training data set for data access. The computational complexity of the method that produces the model (or pattern) is independent of the size of the original data set. The dependency network directly returns explicitly encoded data in the conditional probability distributions of the dependency network. Non-explicitly encoded data is generated via Gibbs sampling, approximated, or ignored.
申请公布号 US7831627(B2) 申请公布日期 2010.11.09
申请号 US20060324960 申请日期 2006.01.03
申请人 MICROSOFT CORPORATION 发明人 CHICKERING DAVID M.;HECKERMAN DAVID E.;HULTEN GEOFFREY J.
分类号 G06F17/30;G06F7/00;G06N7/00 主分类号 G06F17/30
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