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Title: Correlation Between Temperature and COVID-19 (Suspected, Confirmed and Death) Cases based on Machine Learning Analysis
Authors: Siddiqui, Mohammad Khubeb
Menendez, Ruben Morales
Gupta, Pradeep Kumar
iqbal, Hafiz M.N.
Hussain, Fida
Khatoon, Khudeja
Ahmad, Sultan
Keywords: Coronavirus
Machine learning
k-means clustering
Issue Date: 2020
Publisher: Jaypee University of Information Technology, Solan, H.P.
Abstract: Currently, the whole world is struggling with the biggest health problem COVID-19 name coined by the World Health Organization (WHO). This was raised from China in December 2019. This pandemic is going to change the world. Due to its communicable nature, it is contagious to both medically and economically. Though different contributing factors are not known yet. Herein, an effort has been made to find the correlation between temperature and different cases situation (suspected, confirmed, and death cases). For a said purpose, k-means clustering-based machine learning method has been employed on the data set from different regions of China, which has been obtained from the WHO. The novelty of this work is that we have included the temperature field in the original WHO data set and further explore the trends. The trends show the effect of temperature on each region in three different perspectives of COVID-19 – suspected, confirmed and death.
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