Affiliation:
1. IMSI, “Athena” RC, Athens, Greece
2. Dept. of Informatics and Tele/tions, University of the Peloponnese, Tripolis, Greece
3. NTU Athens, Athens, Greece
Abstract
Abstract
Since the beginning of the coronavirus pandemic, a large number of relevant articles have been published or become available in preprint servers. These articles, along with earlier related literature, compose a valuable knowledge base affecting contemporary research studies or even government actions to limit the spread of the disease, and directing treatment decisions taken by physicians. However, the number of such articles is increasing at an intense rate, making the exploration of the relevant literature and the identification of useful knowledge challenging. In this work, we describe BIP4COVID19, an open data set that offers a variety of impact measures for coronavirus-related scientific articles. These measures can be exploited for the creation or extension of added-value services aiming to facilitate the exploration of the respective literature, alleviating the aforementioned issue. In the same context, as a use case, we provide a publicly accessible keyword-based search interface for COVID-19-related articles, which leverages our data to rank search results according to the calculated impact indicators.
Funder
Moving from Big Data Management to Data Science
Operational Programme “Competitiveness, Entrepreneurship and Innovation”
Greece and the European Union
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