Word Sense Disambiguation using Statistical Models and WordNet
Proceedings of the Third International Conference on Language Resources and Evaluation (LREC 2002)
Abstract
One of the main problems in Natural Language Processing is lexical ambiguity, words often have multiple lexical functionalities (i.e. they can have various parts-of-speech) or have several semantic meanings. Nowadays, the semantic ambiguity problem, most known asWord Sense Disambiguation, is still an open problem in this area. The accuracy of the different approaches for semantic disambiguation is much lower than the accuracy of the systems which solve other kinds of ambiguity, such as part-of-speech tagging. Corpus-based approaches have been widely used in nearly all natural language processing tasks. In this work, we propose a Word Sense Disambiguation system which is based on Hidden Markov Models and the use of WordNet. Some experimental results of our system on the SemCor corpus are provided.