Being able to train Named Entity Recognition (NER) models for emerging topics is crucial for many real-world applications especially in the medical domain where new topics are continuously evolving out of the scope of existing models and datasets. For a realistic evaluation setup, we introduce a novel COVID-19 news NER dataset (COVIDNEWS-NER) and release 3000 entries of hand annotated strongly labelled sentences and 13000 auto-generated weakly labelled sentences. Besides the dataset, we propose CONTROSTER, a recipe to strategically combine weak and strong labels in improving NER in an emerging topic through transfer learning. We show the effectiveness of CONTROSTER on COVIDNEWS-NER while providing analysis on combining weak and strong label...
Our working hypothesis is that key factors in COVID-19 imaging are the available imaging data and th...
Information extraction (IE) plays a significant role in automating the knowledge acquisition process...
Kühnel L, Fluck J. We are not ready yet: limitations of state-of-the-art disease named entity recogn...
Named Entity Recognition (NER) for rare long-tail entities as e.g., often found in domain-specific s...
One of the central tasks of medical text analysis is to extract and structure meaningful information...
Recent named entity recognition (NER) models often rely on human-annotated datasets, requiring the s...
Doctors need to review a substantial amount of medical documents, such as radiology reports, to make...
We investigate the potential benefit of incorporating dictionary information into a neural network a...
Most NER methods rely on extensive labeled data for model training, which struggles in the low-resou...
The explosion of disinformation related to the COVID-19 pandemic has overloaded fact-checkers and me...
In recent years, social media outlets such as Twitter and Facebook have drawn attention from compani...
In recent years, social media outlets such as Twitter and Facebook have drawn attention from compani...
Following the global COVID-19 pandemic, the number of scientific papers studying the virus has grown...
Automated information extraction with natural language processing (NLP) tools is required to gain sy...
Emergence of the Coronavirus 2019 Disease has highlighted further the need for timely support for cl...
Our working hypothesis is that key factors in COVID-19 imaging are the available imaging data and th...
Information extraction (IE) plays a significant role in automating the knowledge acquisition process...
Kühnel L, Fluck J. We are not ready yet: limitations of state-of-the-art disease named entity recogn...
Named Entity Recognition (NER) for rare long-tail entities as e.g., often found in domain-specific s...
One of the central tasks of medical text analysis is to extract and structure meaningful information...
Recent named entity recognition (NER) models often rely on human-annotated datasets, requiring the s...
Doctors need to review a substantial amount of medical documents, such as radiology reports, to make...
We investigate the potential benefit of incorporating dictionary information into a neural network a...
Most NER methods rely on extensive labeled data for model training, which struggles in the low-resou...
The explosion of disinformation related to the COVID-19 pandemic has overloaded fact-checkers and me...
In recent years, social media outlets such as Twitter and Facebook have drawn attention from compani...
In recent years, social media outlets such as Twitter and Facebook have drawn attention from compani...
Following the global COVID-19 pandemic, the number of scientific papers studying the virus has grown...
Automated information extraction with natural language processing (NLP) tools is required to gain sy...
Emergence of the Coronavirus 2019 Disease has highlighted further the need for timely support for cl...
Our working hypothesis is that key factors in COVID-19 imaging are the available imaging data and th...
Information extraction (IE) plays a significant role in automating the knowledge acquisition process...
Kühnel L, Fluck J. We are not ready yet: limitations of state-of-the-art disease named entity recogn...