发明名称 Machine-learned approach to determining document relevance for search over large electronic collections of documents
摘要 The present invention relates to a system and methodology that applies automated learning procedures for determining document relevance and assisting information retrieval activities. A system is provided that facilitates a machine-learned approach to determine document relevance. The system includes a storage component that receives a set of human selected items to be employed as positive test cases of highly relevant documents. A training component trains at least one classifier with the human selected items as positive test cases and one or more other items as negative test cases in order to provide a query-independent model, wherein the other items can be selected by a statistical search, for example. Also, the trained classifier can be employed to aid an individual in identifying and selecting new positive cases or utilized to filter or re-rank results from a statistical-based search.
申请公布号 US7287012(B2) 申请公布日期 2007.10.23
申请号 US20040754159 申请日期 2004.01.09
申请人 MICROSOFT CORPORATION 发明人 CORSTON SIMON H.;CHANDRASEKAR RAMAN;CHEN HARR
分类号 G06F15/18;G06F17/00;G06F17/30;G06N3/08 主分类号 G06F15/18
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