METHODS FOR GENERATING NATURAL LANGUAGE PROCESSING SYSTEMS

Methods are presented for generating a natural language model. The method may comprise: ingesting training data representative of documents to be analyzed by the natural language model, generating a hierarchical data structure comprising at least two topical nodes within which the training data is t...

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Main Authors KING GARY C, NUNEZ EDGAR, HINRICHS MARTHA G, BASAVARAJ VEENA, SCHNOEBELEN TYLER J, ROBINSON JAMES B, MECHANIC ROSS, ERLE SCHUYLER D, CALLAHAN BRENDAN D, TEPPER PAUL A, MUNRO ROBERT J, BRENIER JASON, SAXENA TRIPTI, CASBON MICHELLE, LUGER SARAH K, LONG JESSICA D, MOST HALEY, WALKER CHRISTOPHER, SARIN UJJWAL, GILCHRIST-SCOTT ANDREW, NAIR ANEESH
Format Patent
LanguageEnglish
Published 09.06.2016
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Summary:Methods are presented for generating a natural language model. The method may comprise: ingesting training data representative of documents to be analyzed by the natural language model, generating a hierarchical data structure comprising at least two topical nodes within which the training data is to be subdivided into by the natural language model, selecting a plurality of documents among the training data to be annotated, generating an annotation prompt for each document configured to elicit an annotation about said document indicating which node among the at least two topical nodes said document is to be classified into, receiving the annotation based on the annotation prompt; and generating the natural language model using an adaptive machine learning process configured to determine patterns among the annotations for how the documents in the training data are to be subdivided according to the at least two topical nodes of the hierarchical data structure.
Bibliography:Application Number: US201514964517