BACKGROUND: This article describes a high-recall, high-precision approach for the extraction of biomedical entities from scientific articles. METHOD: The approach uses a two-stage pipeline, combining a dictionary-based entity recognizer with a machine-learning classifier. First, the OGER entity recognizer, which has a bias towards high recall, annotates the terms that appear in selected domain ontologies. Subsequently, the Distiller framework uses this information as a feature for a machine learning algorithm to select the relevant entities only. For this step, we compare two different supervised machine-learning algorithms: Conditional Random Fields and Neural Networks. RESULTS: In an in-domain evaluation using the CRAFT corpus, we test th...
Copyright © 2012 Tiago Grego et al. This is an open access article distributed under the Creative Co...
AbstractNamed Entity Recognition and Classification (NERC) is one of the most fundamental and importa...
Abstract Background We present a text-mining tool for recognizing biomedical entities in scientific ...
Abstract Background This article describes a high-recall, high-precision approach for the extraction...
This short paper briefly presents an efficient implementation of a named entity recognition system f...
Background Named Entity Recognition is a common task in Natural Language Processing applications, w...
Entity recognition and disambiguation (ERD) for the biomedical domain are notoriously difficult prob...
Entity recognition has been studied for several years with good results. However, as the focus of in...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Abstract: Machine reading (MR) is essential for unlocking valuable knowledge contained in millions o...
Machine reading (MR) is essential for unlocking valuable knowledge contained in millions of existing...
AbstractNamed entity recognition is a crucial component of biomedical natural language processing, e...
The task of recognising biomedical named entities in natural language documents called biomedical Na...
Elsevier use only: Received date here; revised date here; accepted date here As new high-throughput ...
Biomedical Named Entity Recognition is a common task in Natural Language Processing applications, wh...
Copyright © 2012 Tiago Grego et al. This is an open access article distributed under the Creative Co...
AbstractNamed Entity Recognition and Classification (NERC) is one of the most fundamental and importa...
Abstract Background We present a text-mining tool for recognizing biomedical entities in scientific ...
Abstract Background This article describes a high-recall, high-precision approach for the extraction...
This short paper briefly presents an efficient implementation of a named entity recognition system f...
Background Named Entity Recognition is a common task in Natural Language Processing applications, w...
Entity recognition and disambiguation (ERD) for the biomedical domain are notoriously difficult prob...
Entity recognition has been studied for several years with good results. However, as the focus of in...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Abstract: Machine reading (MR) is essential for unlocking valuable knowledge contained in millions o...
Machine reading (MR) is essential for unlocking valuable knowledge contained in millions of existing...
AbstractNamed entity recognition is a crucial component of biomedical natural language processing, e...
The task of recognising biomedical named entities in natural language documents called biomedical Na...
Elsevier use only: Received date here; revised date here; accepted date here As new high-throughput ...
Biomedical Named Entity Recognition is a common task in Natural Language Processing applications, wh...
Copyright © 2012 Tiago Grego et al. This is an open access article distributed under the Creative Co...
AbstractNamed Entity Recognition and Classification (NERC) is one of the most fundamental and importa...
Abstract Background We present a text-mining tool for recognizing biomedical entities in scientific ...