Across various domains, such as health and social care, law, news, and social media, there are increasing quantities of unstructured texts being produced. These potential data sources often contain rich information that could be used for domain-specific and research purposes. However, the unstructured nature of free-text data poses a significant challenge for its utilisation due to the necessity of substantial manual intervention from domain-experts to label embedded information. Annotation tools can assist with this process by providing functionality that enables the accurate capture and transformation of unstructured texts into structured annotations, which can be used individually, or as part of larger Natural Language Processing (NLP) p...
We developed a tool that integrates the National Library of Medicine's MetaMap software with GATE, a...
Annotated corpora are sets of structured text used to enable Natural Language Pro-cessing (NLP) task...
Document annotation is an elementary task in the development of Text Mining applications, notably in...
The Unstructured Information Management Architecture (UIMA) [1] framework is a growing platform for ...
Background: Semantic annotators and Natural Language Processing (NLP) methods for Named Entity Recog...
In the context of clinical trials and medical research medical text mining can provide broader insig...
Automatic term annotation from biomedical documents and external information linking are becoming a ...
As supervised machine learning methods for addressing tasks in natural language processing (NLP) pro...
As supervised machine learning methods for addressing tasks in natural language process-ing (NLP) pr...
This study investigates the use of unsupervised word embeddings and sequence features for sample rep...
This paper presents TEXTPRO-AL (Active Learning for Text Processing), a platform where human annotat...
Abstract — Structured data and controlled vocabularies in medical records are common goals, but wid...
BACKGROUND: Natural Language Processing (NLP) systems can be used for specific Information Extractio...
While NLP tools are now widely available, their use can be problematic considering the lack of homog...
In the context of clinical trials and medical research medical text mining can provide broader insig...
We developed a tool that integrates the National Library of Medicine's MetaMap software with GATE, a...
Annotated corpora are sets of structured text used to enable Natural Language Pro-cessing (NLP) task...
Document annotation is an elementary task in the development of Text Mining applications, notably in...
The Unstructured Information Management Architecture (UIMA) [1] framework is a growing platform for ...
Background: Semantic annotators and Natural Language Processing (NLP) methods for Named Entity Recog...
In the context of clinical trials and medical research medical text mining can provide broader insig...
Automatic term annotation from biomedical documents and external information linking are becoming a ...
As supervised machine learning methods for addressing tasks in natural language processing (NLP) pro...
As supervised machine learning methods for addressing tasks in natural language process-ing (NLP) pr...
This study investigates the use of unsupervised word embeddings and sequence features for sample rep...
This paper presents TEXTPRO-AL (Active Learning for Text Processing), a platform where human annotat...
Abstract — Structured data and controlled vocabularies in medical records are common goals, but wid...
BACKGROUND: Natural Language Processing (NLP) systems can be used for specific Information Extractio...
While NLP tools are now widely available, their use can be problematic considering the lack of homog...
In the context of clinical trials and medical research medical text mining can provide broader insig...
We developed a tool that integrates the National Library of Medicine's MetaMap software with GATE, a...
Annotated corpora are sets of structured text used to enable Natural Language Pro-cessing (NLP) task...
Document annotation is an elementary task in the development of Text Mining applications, notably in...