Over the past 15 years, a range of methods have been developed that are able to learn human-like estimates of the semantic relatedness between terms from the way in which these terms are distributed in a corpus of unannotated natural language text. These methods have also been evaluated in a number of applications in the cognitive science, computational linguistics and the information retrieval literatures. In this paper, we review the available methodologies for derivation of semantic relatedness from free text, as well as their evaluation in a variety of biomedical and other applications. Recent methodological developments, and their applicability to several existing applications are also discussed.
Description
Empirical Distributional Semantics: Methods and Biomedical Applications
%0 Journal Article
%1 cohen2009empirical
%A Cohen, T
%A Widdows, D
%D 2009
%J J Biomed Inform
%K distributional relatedness review semantic semantics
%N 2
%P 390-405
%R 10.1016/j.jbi.2009.02.002
%T Empirical distributional semantics: methods and biomedical applications
%U http://www.ncbi.nlm.nih.gov/pmc/articles/PMC2750802/
%V 42
%X Over the past 15 years, a range of methods have been developed that are able to learn human-like estimates of the semantic relatedness between terms from the way in which these terms are distributed in a corpus of unannotated natural language text. These methods have also been evaluated in a number of applications in the cognitive science, computational linguistics and the information retrieval literatures. In this paper, we review the available methodologies for derivation of semantic relatedness from free text, as well as their evaluation in a variety of biomedical and other applications. Recent methodological developments, and their applicability to several existing applications are also discussed.
@article{cohen2009empirical,
abstract = {Over the past 15 years, a range of methods have been developed that are able to learn human-like estimates of the semantic relatedness between terms from the way in which these terms are distributed in a corpus of unannotated natural language text. These methods have also been evaluated in a number of applications in the cognitive science, computational linguistics and the information retrieval literatures. In this paper, we review the available methodologies for derivation of semantic relatedness from free text, as well as their evaluation in a variety of biomedical and other applications. Recent methodological developments, and their applicability to several existing applications are also discussed.},
added-at = {2012-07-11T13:43:10.000+0200},
author = {Cohen, T and Widdows, D},
biburl = {https://www.bibsonomy.org/bibtex/27f07944989ab36f5be4d76c7b649b83f/folke},
description = {Empirical Distributional Semantics: Methods and Biomedical Applications},
doi = {10.1016/j.jbi.2009.02.002},
interhash = {30d9690895649bf4ede039f08286c539},
intrahash = {7f07944989ab36f5be4d76c7b649b83f},
journal = {J Biomed Inform},
keywords = {distributional relatedness review semantic semantics},
month = apr,
number = 2,
pages = {390-405},
pmid = {19232399},
timestamp = {2012-07-11T13:43:10.000+0200},
title = {Empirical distributional semantics: methods and biomedical applications},
url = {http://www.ncbi.nlm.nih.gov/pmc/articles/PMC2750802/},
volume = 42,
year = 2009
}