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Predicting the Prevalence Rate of COVID-19 Falsity on Temperature

机译:预测Covid-19虚体温度的患病率

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COVID-19 originally known as Corona virus has been declared as pandemic by the World Health Organization on 11th March 2020. This infectious disease discovered from Wuhan, China in December 2019 and has affected millions of people around the world. Every country around the world is undergoing global economic crises and therefore, it’ s the need of an hour to predict the prevalence and incidence of this disease throughout the world. This will help the medical practitioners and government agencies in India to make key decisions and appropriate measures to demystify the disease and prevent the country from global economic recession. This paper aims to analyze the number of cases in India by utilizing the machine learning techniques and exploratory data analysis to observe the growth patterns and map the increase in the frequency of those infected. The source of data was authentic COVID-19website which was showing confirmed diseased cases of Delhi, Uttar Pradesh and India as a whole. The count of confirmed cases taken from 14th March 2020 to 3rd September 2020 put together will help to know how effective the current efforts have been and also help to realize the need of working further to combat this virus. This research focuses on predicting the possible number of confirmed cases using techniques of data mining, data analysis with particularly regression, clustering and predictive analysis. The primary focus is to predict the number of cases in the coming month and finding out that whether there is relation between temperature with number of confirmed cases or not.
机译:Covid-19最初被称为电晕病毒已被世界卫生组织宣布为11月11日 th 2020年3月20日。从2019年12月武汉发现的这种传染病,并影响了全球数百万人。世界各地正在全球经济危机处于全球经济危机,因此需要一个小时来预测全世界本病的患病率和发病率。这将有助于在印度的医疗从业者和政府机构制定关键决策和适当措施,使疾病揭开并防止国家从全球经济衰退。本文旨在通过利用机器学习技术和探索性数据分析来观察增长模式并映射受感染者频率的增加来分析印度的案件数量。数据来源是正宗的covid-19bebsite,它显示了德里,北方邦和印度的确认病例。从14起取得确认案件的计数 th 3月20日至3日 rd 9月2020年9月结合将有助于了解目前的努力有效,也有助于实现进一步努力打击这条病毒的必要性。本研究侧重于使用数据挖掘技术,具有特别回归,聚类和预测分析的数据分析来预测可能数量的确认案例。主要焦点是预测未来月的案例数,并发现在与确认病例数量之间存在温度之间是否存在关系。

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