中文摘要 |
This paper describes a general framework for adaptive conceptual word
sense disambiguation. The proposed system begins with knowledge acquisition
from machine-readable dictionaries. Central to the approach is the adaptive step
that enriches the initial knowledge base with knowledge gleaned from the partial
disambiguated text. Once the knowledge base is adjusted to suit the text at hand,
it is applied to the text again to finalize the disambiguation decision. Definitions
and example sentences from the Longman Dictionary of Contemporary English are
employed as training materials for word sense disambiguation, while passages
from the Brown corpus and Wall Street Journal (WSJ) articles are used for testing.
An experiment showed that adaptation did significantly improve the success rate.
For thirteen highly ambiguous words, the proposed method disambiguated with an
average precision rate of 70.5% for the Brown corpus and 77.3% for the WSJ
articles. |