Meaningful Clusters

نویسندگان

  • Antonio Sanfilippo
  • Gus Calapristi
  • Vernon L. Crow
  • Elizabeth G. Hetzler
  • Alan Turner
چکیده

We present an approach to the disambiguation of cluster labels that capitalizes on the notion of semantic similarity to assign WordNet senses to cluster labels. The approach provides interesting insights on how document clustering can provide the basis for developing a novel approach to word sense disambiguation.

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تاریخ انتشار 2004