Combining Unsupervised Lexical Knowledge Methods for Word Sense Disambiguation
Abstract
This paper presents a method to combine a set of unsupervised algorithms that can accurately disambiguate word senses in a large, completely untagged corpus. Although most of the techniques for word sense resolution have been presented as stand-alone, it is our belief that full-fledged lexical ambiguity resolution should combine several information sources and techniques. The set of techniques have been applied in a combined way to disambiguate the genus terms of two machine-readable dictionaries (MRD), enabling us to construct complete taxonomies for Spanish and French. Tested accuracy is above 80% overall and 95% for two-way ambiguous genus terms, showing that taxonomy building is not limited to structured dictionaries such as LDOCE.
Cite
@article{arxiv.cmp-lg/9704007,
title = {Combining Unsupervised Lexical Knowledge Methods for Word Sense Disambiguation},
author = {German Rigau and Jordi Atserias and Eneko Agirre},
journal= {arXiv preprint arXiv:cmp-lg/9704007},
year = {2008}
}
Comments
8 pages, uses aclap.sty