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Artificial Intelligence in Action: Addressing the COVID-19 Pandemic with Natural Language Processing

2020-10-09 22:10:43
Qingyu Chen, Robert Leaman, Alexis Allot, Ling Luo, Chih-Hsuan Wei, Shankai Yan, Zhiyong Lu

Abstract

The COVID-19 pandemic has had a significant impact on society, both because of the serious health effects of COVID-19 and because of public health measures implemented to slow its spread. Many of these difficulties are fundamentally information needs; attempts to address these needs have caused an information overload for both researchers and the public. Natural language processing (NLP) - the branch of artificial intelligence that interprets human language - can be applied to address many of the information needs made urgent by the COVID-19 pandemic. This review surveys approximately 150 NLP studies and more than 50 systems and datasets addressing the COVID-19 pandemic. We detail work on four core NLP tasks: information retrieval, named entity recognition, literature-based discovery, and question answering. We also describe work that directly addresses aspects of the pandemic through four additional tasks: topic modeling, sentiment and emotion analysis, case load forecasting and misinformation detection. We conclude discussing observable trends and remaining challenges.

Abstract (translated)

URL

https://arxiv.org/abs/2010.16413

PDF

https://arxiv.org/pdf/2010.16413.pdf


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