Advances in transfer learning and domain adaptation have raised hopes that once-challenging NLP tasks are ready to be put to use for sophisticated information extraction needs. In this work, we describe an effort to do just that – combining state-of-the-art neural methods for negation detection, document time relation extraction, and aspectual link prediction, with the eventual goal of extracting drug timelines from electronic health record text. We train on the THYME colon cancer corpus and test on both the THYME brain cancer corpus and an internal corpus, and show that performance of the combined systems is unacceptable despite good performance of individual systems. Although domain adaptation shows improvements on each individual system,...
International audienceAbstract Background Transfer learning aims at enhancing machine learning perfo...
PURPOSE Natural language processing (NLP) techniques have been adopted to reduce the curation costs ...
The emergence of deep learning algorithms in natural language processing has boosted the development...
Transformer-based neural language models have led to breakthroughs for a variety of natural language...
There has been vast and growing amount of healthcare data especially with the rapid adoption of elec...
In this paper, we describe the system of the KULeuven-LIIR submission for Clinical TempEval 2017. We...
Introduction: Classifying whether concepts in an unstructured clinical text are negated is an import...
Thesis (Master's)--University of Washington, 2017-12Discharge summaries are a concise representation...
This thesis explores information extraction (IE) in \textit{low-resource} conditions, in which the q...
International audienceTransfer learning (TL) proposes to enhance machine learning performance on a p...
International audienceIn this paper we present our participation to SemEval 2017 Task 12. We used a ...
Temporal information extraction is and has been a crucial aspect of automatic language understanding...
This paper presents the Source-Free Domain Adaptation shared task held within SemEval-2021. The aim ...
Language usage can change across periods of time, but document classifiers models are usually traine...
PURPOSE: Natural language processing (NLP) techniques have been adopted to reduce the curation costs...
International audienceAbstract Background Transfer learning aims at enhancing machine learning perfo...
PURPOSE Natural language processing (NLP) techniques have been adopted to reduce the curation costs ...
The emergence of deep learning algorithms in natural language processing has boosted the development...
Transformer-based neural language models have led to breakthroughs for a variety of natural language...
There has been vast and growing amount of healthcare data especially with the rapid adoption of elec...
In this paper, we describe the system of the KULeuven-LIIR submission for Clinical TempEval 2017. We...
Introduction: Classifying whether concepts in an unstructured clinical text are negated is an import...
Thesis (Master's)--University of Washington, 2017-12Discharge summaries are a concise representation...
This thesis explores information extraction (IE) in \textit{low-resource} conditions, in which the q...
International audienceTransfer learning (TL) proposes to enhance machine learning performance on a p...
International audienceIn this paper we present our participation to SemEval 2017 Task 12. We used a ...
Temporal information extraction is and has been a crucial aspect of automatic language understanding...
This paper presents the Source-Free Domain Adaptation shared task held within SemEval-2021. The aim ...
Language usage can change across periods of time, but document classifiers models are usually traine...
PURPOSE: Natural language processing (NLP) techniques have been adopted to reduce the curation costs...
International audienceAbstract Background Transfer learning aims at enhancing machine learning perfo...
PURPOSE Natural language processing (NLP) techniques have been adopted to reduce the curation costs ...
The emergence of deep learning algorithms in natural language processing has boosted the development...