TY - JOUR T1 - Korean Semantic Role Labeling Using Semantic Frames and Synonym Clusters AU - Lim, Soojong AU - Lim, Joon-Ho AU - Lee, Chung-Hee AU - Kim, Hyun-Ki JO - Journal of KIISE, JOK PY - 2016 DA - 2016/1/14 DO - KW - Korean Propbank KW - semantic role labeling KW - synonym based on sense KW - case frame AB - Semantic information and features are very important for Semantic Role Labeling(SRL) though many SRL systems based on machine learning mainly adopt lexical and syntactic features. Previous SRL research based on semantic information is very few because using semantic information is very restricted. We proposed the SRL system which adopts semantic information, such as named entity, word sense disambiguation, filtering adjunct role based on sense, synonym cluster, frame extension based on synonym dictionary and joint rule of syntactic-semantic information, and modified verb-specific numbered roles, etc. According to our experimentations, the proposed present method outperforms those of lexical-syntactic based research works by about 3.77 (Korean Propbank) to 8.05 (Exobrain Corpus) F1-scores.