UCM3: Classification of Semantic Relations between Nominals using Sequential Minimal Optimization

نویسندگان

  • Isabel Segura-Bedmar
  • Doaa Samy
  • José L. Martínez
چکیده

This paper presents a method for automatic classification of semantic relations between nominals using Sequential Minimal Optimization. We participated in the four categories of SEMEVAL task 4 (A: No Query, No Wordnet; B: WordNet, No Query; C: Query, No WordNet; D: WordNet and Query) and for all training datasets. Best scores were achieved in category B using a set of feature vectors including lexical file numbers of nominals obtained from WordNet and a new feature WordNet Vector designed for the task 1 .

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تاریخ انتشار 2007