Data Analytics: COVID-19 Prediction Using Multimodal Data

P. Mahalle, Nilesh P. Sable, N. Mahalle, G. Shinde
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引用次数: 23

Abstract

Globally, there is massive uptake and explosion of data and challenge is to address issues like scale, pace, velocity, variety, volume and complexity of this big data. Considering the recent epidemic in China, modeling of COVID-19 epidemic for cumulative number of infected cases using data available in early phase was big challenge. Being COVID-19 pandemic during very short time span, it is very important to analyze the trend of these spread and infected cases. This chapter presents medical perspective of COVID-19 towards epidemiological triad and the study of state-of-the-art. The main aim this chapter is to present different predictive analytics techniques available for trend analysis, different models and algorithms and their comparison. Finally, this chapter concludes with the prediction of COVID-19 using Prophet algorithm indicating more faster spread in short term. These predictions will be useful to government and healthcare communities to initiate appropriate measures to control this outbreak in time.
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数据分析:使用多模式数据进行COVID-19预测
在全球范围内,数据的大量吸收和爆炸式增长,挑战在于解决这些大数据的规模、速度、速度、种类、数量和复杂性等问题。考虑到中国近期的疫情,利用早期可用数据建立COVID-19累计感染病例数的疫情模型是一个很大的挑战。新冠肺炎大流行发生的时间很短,分析这些传播和感染病例的趋势非常重要。本章从流行病学三位一体和最新研究的角度介绍了COVID-19的医学视角。本章的主要目的是介绍可用于趋势分析的不同预测分析技术,不同的模型和算法及其比较。最后,本章最后使用Prophet算法预测COVID-19,表明短期内传播速度更快。这些预测将有助于政府和卫生保健社区采取适当措施,及时控制疫情。
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Data Analytics: COVID-19 Prediction Using Multimodal Data COVID-19: Loose Ends Intelligent Systems and Methods to Combat Covid-19
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