Senseval-3 task: Word Sense Disambiguation of WordNet glosses
نویسنده
چکیده
The SENSEVAL-3 task to perform word-sense disambiguation of WordNet glosses was designed to encourage development of technology to make use of standard lexical resources. The task was based on the availability of sensedisambiguated hand-tagged glosses created in the eXtended WordNet project. The hand-tagged glosses provided a “gold standard” for judging the performance of automated disambiguation systems. Seven teams participated in the task, with a total of 10 runs. Scoring these runs as an “all-words” task, along with considerable discussions among participants, provided more insights than just the underlying technology. The task identified several issues about the nature of the WordNet sense inventory and the underlying use of wordnet design principles, particularly the significance of WordNet-style relations.
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