AbstractThe aim of this study is to explore the word sense disambiguation (WSD) problem across two biomedical domains—biomedical literature and clinical notes. A supervised machine learning technique was used for the WSD task. One of the challenges addressed is the creation of a suitable clinical corpus with manual sense annotations. This corpus in conjunction with the WSD set from the National Library of Medicine provided the basis for the evaluation of our method across multiple domains and for the comparison of our results to published ones. Noteworthy is that only 20% of the most relevant ambiguous terms within a domain overlap between the two domains, having more senses associated with them in the clinical space than in the biomedical ...
OBJECTIVE: Current techniques for knowledge-based Word Sense Disambiguation (WSD) of ambiguous biome...
Background: Word sense disambiguation (WSD) is critical in the biomedical domain for improving the p...
International audienceThis paper tackles the problem of term ambiguity, especially for biomedical li...
AbstractThe aim of this study is to explore the word sense disambiguation (WSD) problem across two b...
With the ever increase in biomedical literature, text-mining has emerged as an important technology ...
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...
There is a growing need for automatic extraction of information and knowledge from the increasing am...
University of Minnesota Ph.D. dissertation. December 2012. Major: Health Informatics. Advisor: Sergu...
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...
AbstractAutomatic processing of biomedical documents is made difficult by the fact that many of the ...
In the biomedical domain, word sense ambiguity is a widely spread problem with bioinformatics resear...
Word sense disambiguation (WSD) is an important step in biomedical text mining, which is responsible...
Addressing ambiguity issues is an important step in natural language processing (NLP) pipelines desi...
OBJECTIVE: Current techniques for knowledge-based Word Sense Disambiguation (WSD) of ambiguous biome...
Background: Word sense disambiguation (WSD) is critical in the biomedical domain for improving the p...
International audienceThis paper tackles the problem of term ambiguity, especially for biomedical li...
AbstractThe aim of this study is to explore the word sense disambiguation (WSD) problem across two b...
With the ever increase in biomedical literature, text-mining has emerged as an important technology ...
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...
There is a growing need for automatic extraction of information and knowledge from the increasing am...
University of Minnesota Ph.D. dissertation. December 2012. Major: Health Informatics. Advisor: Sergu...
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...
AbstractAutomatic processing of biomedical documents is made difficult by the fact that many of the ...
In the biomedical domain, word sense ambiguity is a widely spread problem with bioinformatics resear...
Word sense disambiguation (WSD) is an important step in biomedical text mining, which is responsible...
Addressing ambiguity issues is an important step in natural language processing (NLP) pipelines desi...
OBJECTIVE: Current techniques for knowledge-based Word Sense Disambiguation (WSD) of ambiguous biome...
Background: Word sense disambiguation (WSD) is critical in the biomedical domain for improving the p...
International audienceThis paper tackles the problem of term ambiguity, especially for biomedical li...