This paper presents an adaptation of Lesk’s dictionarybased word sense disambiguation algorithm. Rather than using a standard
dictionary as the source of glosses for our approach, the lexical database WordNet is employed. This provides a rich hierarchy
of semantic relations that our algorithm can exploit. This method is evaluated using the English lexical sample data from
the Senseval-2 word sense disambiguation exercise, and attains an overall accuracy of 32%. This represents a significant improvement
over the 16% and 23% accuracy attained by variations of the Lesk algorithm used as benchmarks during the SENSEVAL-2 comparative
exercise among word sense disambiguation systems.