Journal ArticleThis paper describes a bootstrapping algorithm called Basilisk that learns high-quality semantic lexicons for multiple categories. Basilisk begins with an unannotated corpus and seed words for each semantic category, which are then bootstrapped to learn new words for each category. Basilisk hypothesizes the semantic class of a word based on collective information over a large body of extraction pattern contexts. We evaluate Basilisk on six semantic categories. The semantic lexicons produced by Basilisk have higher precision than those produced by previous techniques, with several categories showing substantial improvement
Semantic knowledge can be a great asset to natural language processing systems, but it is usually ha...
This ICML-2005 workshop on ontology learning stands in the tradition of the ECML/PKDD 2004 workshop ...
We discuss work in progress in the semi-automatic generation of \emph{thematic lexicons} by means of...
Journal ArticleMany applications need a lexicon that represents semantic information but acquiring l...
Journal ArticleWe present a bootstrapping method that uses strong syntactic heuristics to learn sema...
We present a bootstrapping algorithm to create a semantic lexicon from a list of seed words and a co...
This paper describes an approach to alleviating the well-known problem of the knowledge acquisition ...
Journal ArticleVarious techniques have been developed to automatically induce semantic dictionaries...
We present a bootstrapping method that uses strong syntactic heuristics to learn semantic lexicons. ...
Journal ArticleIn this paper, we describe a weakly supervised bootstrapping algorithm that reads Web...
Text examples must be exploited in the acquisition of lexical structures. However, neither syntactic...
Journal ArticleSemantic knowledge can be a great asset to natural language processing systems, but i...
While there has been significant recent work on learning semantic parsers for specific task/ domains...
Proceedings of the 16th Nordic Conference of Computational Linguistics NODALIDA-2007. Editors: Jo...
It is very costly to build up lexical resources and domain ontologies. Especially when confronted wi...
Semantic knowledge can be a great asset to natural language processing systems, but it is usually ha...
This ICML-2005 workshop on ontology learning stands in the tradition of the ECML/PKDD 2004 workshop ...
We discuss work in progress in the semi-automatic generation of \emph{thematic lexicons} by means of...
Journal ArticleMany applications need a lexicon that represents semantic information but acquiring l...
Journal ArticleWe present a bootstrapping method that uses strong syntactic heuristics to learn sema...
We present a bootstrapping algorithm to create a semantic lexicon from a list of seed words and a co...
This paper describes an approach to alleviating the well-known problem of the knowledge acquisition ...
Journal ArticleVarious techniques have been developed to automatically induce semantic dictionaries...
We present a bootstrapping method that uses strong syntactic heuristics to learn semantic lexicons. ...
Journal ArticleIn this paper, we describe a weakly supervised bootstrapping algorithm that reads Web...
Text examples must be exploited in the acquisition of lexical structures. However, neither syntactic...
Journal ArticleSemantic knowledge can be a great asset to natural language processing systems, but i...
While there has been significant recent work on learning semantic parsers for specific task/ domains...
Proceedings of the 16th Nordic Conference of Computational Linguistics NODALIDA-2007. Editors: Jo...
It is very costly to build up lexical resources and domain ontologies. Especially when confronted wi...
Semantic knowledge can be a great asset to natural language processing systems, but it is usually ha...
This ICML-2005 workshop on ontology learning stands in the tradition of the ECML/PKDD 2004 workshop ...
We discuss work in progress in the semi-automatic generation of \emph{thematic lexicons} by means of...