Automatic induction of lexical features [Elektronische Ressource] / von Peter Jäger
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Automatic induction of lexical features [Elektronische Ressource] / von Peter Jäger

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409 pages
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GutenAutomaticereicInductioneterofundLexicalMainzFPeatures05Inauguraldissertationderzurerg-UnivErlangungondesausAkJ?gerademischhenPhilosophieGradesPhilologieeinesJohannesDr.bphil.,ersit?tvvorgelegtPdemJ?gerFWiesbadenaceterh2011bagReferenUlrict:henProfessorHeidDr.mW04.10.2010alterhBisangTKderoreferen?ndlict:Pr?fung:ProfessoriiDr.forAbstractaThisGrammarthesisvconcernsharticiallyextractsinbtelligenecialtThenaturalfromlanguageestigatedproautomaticallycessingosystemsdescriptionsthatconcisearethecapableunderofylearninghatheonepropofertiesinofidealexicalwitemsable(propofertiesnlikenemenvoferbalthisvaalencylexicalorLearn-inectionaltheclassypmemacquisitionbeenership)builtautonomouslyHead-drivwhilesystems.theyeareoffulllingsystemtheirEnglishtaskshine-readableforwledgewhicahLearn-theylargehajorvaethatbofeenhighlydeploayamedtheinoutthefactsrstdataplace.

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Publié par
Publié le 01 janvier 2011
Nombre de lectures 70
Langue English
Poids de l'ouvrage 4 Mo

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GutenAutomaticereicInductioneterofundLexicalMainzFPeatures05Inauguraldissertationderzurerg-UnivErlangungondesausAkJ?gerademischhenPhilosophieGradesPhilologieeinesJohannesDr.bphil.,ersit?tvvorgelegtPdemJ?gerFWiesbadenaceterh2011bagReferenUlrict:henProfessorHeidDr.mW04.10.2010alterhBisangTKderoreferen?ndlict:Pr?fung:ProfessoriiDr.G + L + C → S
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