| Literature DB >> 32837183 |
Amir Ahmad1, Sunita Garhwal2, Santosh Kumar Ray3, Gagan Kumar4, Sharaf Jameel Malebary5, Omar Mohammed Barukab5.
Abstract
Covid-19 is one of the biggest health challenges that the world has ever faced. Public health policy makers need the reliable prediction of the confirmed cases in future to plan medical facilities. Machine learning methods learn from the historical data and make predictions about the events. Machine learning methods have been used to predict the number of confirmed cases of Covid-19. In this paper, we present a detailed review of these research papers. We present a taxonomy that groups them in four categories. We further present the challenges in this field. We provide suggestions to the machine learning practitioners to improve the performance of machine learning methods for the prediction of confirmed cases of Covid-19. © CIMNE, Barcelona, Spain 2020.Entities:
Year: 2020 PMID: 32837183 PMCID: PMC7399353 DOI: 10.1007/s11831-020-09472-8
Source DB: PubMed Journal: Arch Comput Methods Eng ISSN: 1134-3060 Impact factor: 7.302
Fig. 1Confirmed cases of three countries (USA, Brazil and Russia) where the number of confirmed cases is increasing steadily. From 22nd January 2020 to 31st May 2020 [5]
Fig. 2Confirmed cases of two countries (Italy and Germany) and Hubei (China) where the number of confirmed cases has almost reached to its peak. From 22nd January 2020 to 31st May 2020 [5]