ABSTRACT OF PhD THESIS Automatic Semantic Role Labeling using Selectional Preferences with Very Large Corpora Determinación Automática de Roles Semánticos usando Preferencias de Selección sobre Corpus muy Grandes
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چکیده
OF PhD THESIS Automatic Semantic Role Labeling using Selectional Preferences with Very Large Corpora Determinación Automática de Roles Semánticos usando Preferencias de Selección sobre Corpus muy Grandes Graduated: Hiram Calvo Center for Research in Computing (CIC) National Polytechnic Institute (IPN) Mexico City, Mexico, 07738
منابع مشابه
Automatic Semantic Role Labeling using Selectional Preferences with Very Large Corpora
OF PhD THESIS Automatic Semantic Role Labeling using Selectional Preferences with Very Large Corpora Determinación Automática de Roles Semánticos usando Preferencias de Selección sobre Corpus muy Grandes Graduated: Hiram Calvo Center for Research in Computing (CIC) National Polytechnic Institute (IPN) Mexico City, Mexico, 07738 [email protected] [email protected] Graduated on June 19th, 2006...
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