The "Close-Distant" Relation of Adjectival Concepts Based on Self-Organizing Map
نویسندگان
چکیده
In this paper we aim to detect some aspects of adjectival meanings. Concepts of adjectives are distributed by SOM (SelfOrganizing map) whose feature vectors are calculated by MI (Mutual Information). For the SOM obtained, we make tight clusters from map nodes, calculated by cosine. In addition, the number of tight clusters obtained by cosine was increased using map nodes and Japanese thesaurus. As a result, the number of extended clusters of concepts was 149 clusters. From the map, we found 8 adjectival clusters in super-ordinate level and some tendencies of similar and dissimilar clusters.
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