KUNLP system in Senseval-3

نویسندگان

  • Hee-Cheol Seo
  • Hae-Chang Rim
  • Soo-Hong Kim
چکیده

We have participated in both English all words task and English lexical sample task of SENSEVAL3. Our system disambiguates senses of a target word in a context by selecting a substituent among WordNet relatives of the target word, such as synonyms, hypernyms, meronyms and so on. The decision is made based on co-occurrence frequency between candidate relatives and each of the context words. Since the co-occurrence frequency is obtainable from raw corpus, our method is considered to be an unsupervised learning algorithm that does not require a sense-tagged corpus.

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تاریخ انتشار 2004