IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

COVID-19 Analysis, Prediction, and Misconceptions: A Computational Machine Learning Model as a New Paradigm in Scientific Research

COVID-19 Analysis, Prediction, and Misconceptions: A Computational Machine Learning Model as a New Paradigm in Scientific Research
View Sample PDF
Author(s): Balachandran Krishnan (CHRIST University (Deemed), India), Sujatha Arun Kokatnoor (CHRIST University (Deemed), India), Vandana Reddy (CHRIST University (Deemed), India)and Boppuru Rudra Prathap (CHRIST University (Deemed), India)
Copyright: 2022
Pages: 36
Source title: Handbook of Research on the Global View of Open Access and Scholarly Communications
Source Author(s)/Editor(s): Daniel Gelaw Alemneh (University of North Texas, USA)
DOI: 10.4018/978-1-7998-9805-4.ch010

Purchase


Abstract

COVID-19 is an infectious disease of the newly discovered coronavirus (CoV). The importance and value of open access (OA) resources are critical in the context of the COVID-19 epidemic. OA aided in the development of a vaccine and informed public health actions necessary to stop the virus from spreading. Many publishers implicitly acknowledged that OA was vital to promote science in the fight against the disease. Accordingly, publishers have committed to OA publication and scholarly communication of disease-related scientific research. This chapter covers three issues based on the modeling of the CoV dataset. First, an exploratory data analysis is done to detect the hidden facts and the relevant information patterns about the affected, recovered, death cases caused by the CoV and the vaccination details. Second, a predictive model is developed using machine learning techniques to effectively predict the number of COVID-19 positive cases in India. In the last step, a hybrid computational model is developed to identify the misconceptions that are spread through social media networks.

Related Content

Christine Kosmopoulos. © 2022. 22 pages.
Melkamu Beyene, Solomon Mekonnen Tekle, Daniel Gelaw Alemneh. © 2022. 21 pages.
Rajkumari Sofia Devi, Ch. Ibohal Singh. © 2022. 21 pages.
Ida Fajar Priyanto. © 2022. 16 pages.
Murtala Ismail Adakawa. © 2022. 27 pages.
Shimelis Getu Assefa. © 2022. 17 pages.
Angela Y. Ford, Daniel Gelaw Alemneh. © 2022. 22 pages.
Body Bottom