This paper focuses on the use of corpus-based machine learning (ML) methods for fine-grained semantic annotation of text. The state of the art in semantic annotation in Life Science as in other technical and scientific domains, takes advantage of recent breakthroughs in the development of natural language processing (NLP) platforms. The resources required to run such platforms include named entity dictionaries, terminologies, grammars and ontologies. The demand for domain-specific, comprehensive and low cost resources led to the intensive use of ML methods. The precise specification of the ML task goal and target knowledge, and the adequate normalization of the training corpus representation can notably increase the quality of the acquired ...
Abstract Background Information Extraction (IE) is a component of text mining that facilitates knowl...
Background: We present the BioNLP 2011 Shared Task Bacteria Track, the first Information Extraction ...
Our research primarily involves the application of natural language processing technology to biomedi...
Biomedical text mining (BTM) aims to create methods for searching and structuring knowledge extracte...
Abstract: Text Mining in biology and biomedicine requires a large amount of domain-specific knowledg...
We describe a novel super-infrastructure for biomedical text mining which incorporates an end-to-end...
In this paper, we demonstrate three NLP applications of the BioLexicon, which is a lexical resource ...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...
A plethora of publicly available biomedical resources do currently exist and are constantly increasi...
Lexical-semantic resources are crucial in many Natural Language Processing (NLP) tasks. These resour...
none6We describe a machine learning system for the recognition of names in biomedical texts. The sy...
Corpus annotation is now a key topic for all areas of natural language processing (NLP) and informat...
Abstract The abundance and unstructured nature of biomedical texts, be it clinical or research conte...
Motivation: Given the explosive growth of biomedical data as well as the literature describing resul...
Machine Learning (ML) is a natural outgrowth of the intersection of Computer Science and Statistics....
Abstract Background Information Extraction (IE) is a component of text mining that facilitates knowl...
Background: We present the BioNLP 2011 Shared Task Bacteria Track, the first Information Extraction ...
Our research primarily involves the application of natural language processing technology to biomedi...
Biomedical text mining (BTM) aims to create methods for searching and structuring knowledge extracte...
Abstract: Text Mining in biology and biomedicine requires a large amount of domain-specific knowledg...
We describe a novel super-infrastructure for biomedical text mining which incorporates an end-to-end...
In this paper, we demonstrate three NLP applications of the BioLexicon, which is a lexical resource ...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...
A plethora of publicly available biomedical resources do currently exist and are constantly increasi...
Lexical-semantic resources are crucial in many Natural Language Processing (NLP) tasks. These resour...
none6We describe a machine learning system for the recognition of names in biomedical texts. The sy...
Corpus annotation is now a key topic for all areas of natural language processing (NLP) and informat...
Abstract The abundance and unstructured nature of biomedical texts, be it clinical or research conte...
Motivation: Given the explosive growth of biomedical data as well as the literature describing resul...
Machine Learning (ML) is a natural outgrowth of the intersection of Computer Science and Statistics....
Abstract Background Information Extraction (IE) is a component of text mining that facilitates knowl...
Background: We present the BioNLP 2011 Shared Task Bacteria Track, the first Information Extraction ...
Our research primarily involves the application of natural language processing technology to biomedi...