Visualising COVID-19 Research
Pierre Le Bras, Azimeh Gharavi, David A. Robb, Ana F. Vidal, Stefano, Padilla, Mike J. Chantler

TL;DR
This paper introduces a novel automated visualization method for large COVID-19 research corpora, enabling efficient topic discovery, trend analysis, and resource navigation to support scientists and policymakers.
Contribution
The paper presents a new theme-based visualization technique combining data modeling, information mapping, and trend analysis for large scientific datasets.
Findings
Revealed increased research on social distancing and mental health.
Identified cross-domain initiatives in education and health.
Tracked the evolution of COVID-19 research topics over time.
Abstract
The world has seen in 2020 an unprecedented global outbreak of SARS-CoV-2, a new strain of coronavirus, causing the COVID-19 pandemic, and radically changing our lives and work conditions. Many scientists are working tirelessly to find a treatment and a possible vaccine. Furthermore, governments, scientific institutions and companies are acting quickly to make resources available, including funds and the opening of large-volume data repositories, to accelerate innovation and discovery aimed at solving this pandemic. In this paper, we develop a novel automated theme-based visualisation method, combining advanced data modelling of large corpora, information mapping and trend analysis, to provide a top-down and bottom-up browsing and search interface for quick discovery of topics and research resources. We apply this method on two recently released publications datasets (Dimensions'…
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Taxonomy
TopicsComputational and Text Analysis Methods · COVID-19 diagnosis using AI · Data-Driven Disease Surveillance
