Word sense disambiguation (WSD) is an important step in biomedical text mining, which is responsible for assigning an unequivocal concept to an ambiguous term, improving the accuracy of biomedical information extraction systems. In this work we followed supervised and knowledge-based disambiguation approaches, with the best results obtained by supervised means. In the supervised method we used bag-of-words as local features, and word embeddings as global features. In the knowledge-based method we combined word embeddings, concept textual definitions extracted from the UMLS database, and concept association values calculated from the MeSH co-occurrence counts from MEDLINE articles. Also, in the knowledge-based method, we tested different wor...
Evaluating Feature Extraction Methods for Biomedical WSD Clint Cuffy, Sam Henry and Bridget McInnes,...
Like text in other domains, biomedical doc-uments contain a range of terms with more than one possib...
AbstractWith the growing use of Natural Language Processing (NLP) techniques for information extract...
There is a growing need for automatic extraction of information and knowledge from the increasing am...
With the ever increase in biomedical literature, text-mining has emerged as an important technology ...
In the biomedical domain, word sense ambiguity is a widely spread problem with bioinformatics resear...
With the ever increase in biomedical literature, text-mining has emerged as an important technology ...
Copyright © 2012 H. Al-Mubaid and S. Gungu. This is an open access article distributed under the Cre...
BACKGROUND: Word sense disambiguation (WSD) algorithms attempt to select the proper sense of ambiguo...
Lexical ambiguity, the ambiguity arising from a string with multiple meanings, is pervasive in lan-g...
IntroductionIn this article, we evaluate a knowledge-based word sense disambiguation method that det...
The biomedical lexicon contains a large amount of term ambiguity, which hinders correct identificati...
AbstractThe aim of this study is to explore the word sense disambiguation (WSD) problem across two b...
OBJECTIVE: Current techniques for knowledge-based Word Sense Disambiguation (WSD) of ambiguous biome...
Addressing ambiguity issues is an important step in natural language processing (NLP) pipelines desi...
Evaluating Feature Extraction Methods for Biomedical WSD Clint Cuffy, Sam Henry and Bridget McInnes,...
Like text in other domains, biomedical doc-uments contain a range of terms with more than one possib...
AbstractWith the growing use of Natural Language Processing (NLP) techniques for information extract...
There is a growing need for automatic extraction of information and knowledge from the increasing am...
With the ever increase in biomedical literature, text-mining has emerged as an important technology ...
In the biomedical domain, word sense ambiguity is a widely spread problem with bioinformatics resear...
With the ever increase in biomedical literature, text-mining has emerged as an important technology ...
Copyright © 2012 H. Al-Mubaid and S. Gungu. This is an open access article distributed under the Cre...
BACKGROUND: Word sense disambiguation (WSD) algorithms attempt to select the proper sense of ambiguo...
Lexical ambiguity, the ambiguity arising from a string with multiple meanings, is pervasive in lan-g...
IntroductionIn this article, we evaluate a knowledge-based word sense disambiguation method that det...
The biomedical lexicon contains a large amount of term ambiguity, which hinders correct identificati...
AbstractThe aim of this study is to explore the word sense disambiguation (WSD) problem across two b...
OBJECTIVE: Current techniques for knowledge-based Word Sense Disambiguation (WSD) of ambiguous biome...
Addressing ambiguity issues is an important step in natural language processing (NLP) pipelines desi...
Evaluating Feature Extraction Methods for Biomedical WSD Clint Cuffy, Sam Henry and Bridget McInnes,...
Like text in other domains, biomedical doc-uments contain a range of terms with more than one possib...
AbstractWith the growing use of Natural Language Processing (NLP) techniques for information extract...