Impact Assessment of COVID-19 Pandemic Through Machine Learning Models

Ever since its outbreak in the Wuhan city of China, COVID-19 pandemic has engulfed more than 211 countries in the world, leaving a trail of unprecedented fatalities. Even more debilitating than the infection itself, were the restrictions like lockdowns and quarantine measures taken to contain the sp...

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Veröffentlicht in:Computers, materials & continua materials & continua, 2021, Vol.68 (3), p.2895-2912
Hauptverfasser: Jaber Alsolami, Fawaz, Saad Al-Malaise ALGhamdi, Abdullah, Irshad Khan, Asif, B. Abushark, Yoosef, Almalawi, Abdulmohsen, Saleem, Farrukh, Agrawal, Alka, Kumar, Rajeev, Ahmad Khan, Raees
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container_end_page 2912
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container_title Computers, materials & continua
container_volume 68
creator Jaber Alsolami, Fawaz
Saad Al-Malaise ALGhamdi, Abdullah
Irshad Khan, Asif
B. Abushark, Yoosef
Almalawi, Abdulmohsen
Saleem, Farrukh
Agrawal, Alka
Kumar, Rajeev
Ahmad Khan, Raees
description Ever since its outbreak in the Wuhan city of China, COVID-19 pandemic has engulfed more than 211 countries in the world, leaving a trail of unprecedented fatalities. Even more debilitating than the infection itself, were the restrictions like lockdowns and quarantine measures taken to contain the spread of Coronavirus. Such enforced alienation affected both the mental and social condition of people significantly. Social interactions and congregations are not only integral part of work life but also form the basis of human evolvement. However, COVID-19 brought all such communication to a grinding halt. Digital interactions have failed to enthuse the fervor that one enjoys in face-to-face meets. The pandemic has shoved the entire planet into an unstable state. The main focus and aim of the proposed study is to assess the impact of the pandemic on different aspects of the society in Saudi Arabia. To achieve this objective, the study analyzes two perspectives: the early approach, and the late approach of COVID-19 and the consequent effects on different aspects of the society. We used a Machine Learning based framework for the prediction of the impact of COVID-19 on the key aspects of society. Findings of this research study indicate that financial resources were the worst affected. Several countries are facing economic upheavals due to the pandemic and COVID-19 has had a considerable impact on the lives as well as the livelihoods of people. Yet the damage is not irretrievable and the world’s societies can emerge out of this setback through concerted efforts in all facets of life.
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source Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals
subjects Coronaviruses
COVID-19
Machine learning
Pandemics
Social factors
Society
Viral diseases
title Impact Assessment of COVID-19 Pandemic Through Machine Learning Models
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