Biomedical Named Entity Recognition (BNER), which extracts important entities such as genes and proteins, is a crucial step of natural language processing in the biomedical domain. Various machine learning-based approaches have been applied to BNER tasks and showed good performance. In this paper, we systematically investigated three different types of word representation (WR) features for BNER, including clustering-based representation, distributional representation, and word embeddings. We selected one algorithm from each of the three types of WR features and applied them to the JNLPBA and BioCreAtIvE II BNER tasks. Our results showed that all the three WR algorithms were beneficial to machine learning-based BNER systems. Moreover, combin...
As the biomedical literature increases exponentially, biomedical named entity recognition (BNER) has...
Word representations are mathematical objects which capture the semantic and syntactic properties of...
abstract: Automating aspects of biocuration through biomedical information extraction could signific...
Biomedical Named Entity Recognition (BNER), which extracts important entities such as genes and prot...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Named Entities (NEs) in biomedical text refer to objects that are of interest to biomedical research...
Bio-Named Entity Recognition (Bio-NER) is the process of identifying and semantically classifying bi...
Abstract Background Biomedical named entity recognition (Bio-NER) is a fundamental task in handling ...
Biomedical Named Entity Recognition (Bio-NER) is an essential step of biomedical information extract...
Biomedical Named Entity Recognition is a common task in Natural Language Processing applications, wh...
Biomedical Named Entity Recognition (Bio-NER) is an essential step of biomedical information extract...
<span lang="EN-AU">Biomedical Named Entity Recognition (BNER) is the task of identifying biomedical ...
The task of recognising biomedical named entities in natural language documents called biomedical Na...
none4Background: Named Entity Recognition is a common task in Natural Language Processing applicatio...
AbstractNamed Entity Recognition and Classification (NERC) is one of the most fundamental and importa...
As the biomedical literature increases exponentially, biomedical named entity recognition (BNER) has...
Word representations are mathematical objects which capture the semantic and syntactic properties of...
abstract: Automating aspects of biocuration through biomedical information extraction could signific...
Biomedical Named Entity Recognition (BNER), which extracts important entities such as genes and prot...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Named Entities (NEs) in biomedical text refer to objects that are of interest to biomedical research...
Bio-Named Entity Recognition (Bio-NER) is the process of identifying and semantically classifying bi...
Abstract Background Biomedical named entity recognition (Bio-NER) is a fundamental task in handling ...
Biomedical Named Entity Recognition (Bio-NER) is an essential step of biomedical information extract...
Biomedical Named Entity Recognition is a common task in Natural Language Processing applications, wh...
Biomedical Named Entity Recognition (Bio-NER) is an essential step of biomedical information extract...
<span lang="EN-AU">Biomedical Named Entity Recognition (BNER) is the task of identifying biomedical ...
The task of recognising biomedical named entities in natural language documents called biomedical Na...
none4Background: Named Entity Recognition is a common task in Natural Language Processing applicatio...
AbstractNamed Entity Recognition and Classification (NERC) is one of the most fundamental and importa...
As the biomedical literature increases exponentially, biomedical named entity recognition (BNER) has...
Word representations are mathematical objects which capture the semantic and syntactic properties of...
abstract: Automating aspects of biocuration through biomedical information extraction could signific...