|
Vincent Claveau and Pascale Sébillot
From efficiency to portability: acquisition of semantic
relations by semi-supervised machine learning,
20th International Conference on Computational Linguistics,
(COLING'04), Geneva, Switzerland, August 2004,
Document (pdf), Document (ps.gz) |
|
Abstract Numeric approaches
to the corpus-based acquisition of lexical semantic relations offer
robust and portable techniques, but poor explanations of their results.
On the other hand, symbolic machine learning approaches can infer
patterns of a target relation from examples of elements that verify
this relation; the produced patterns are efficient and expressive, but
such techniques are often supervised, i.e.
require to be (manually) fed by examples. This paper presents two
original algorithms to combine one technique from each of these
approaches, and keep advantages of both (meaningful patterns, efficient
extraction, portability). Moreover the extraction results of these two
semi-supervised hybrid systems, when applied in an illustrative
purpose to the acquisition of semantic noun-verb relations defined in
the Generative Lexicon framework (Pustejovsky 95), rival those of
supervised methods.
|
|
|