论文标题

Google趋势分析COVID-19

Google Trends Analysis of COVID-19

论文作者

Nguyen, Hoang Long, Pan, Zhenhe, Abu-gellban, Hashim, Jin, Fang, Zhang, Yuanlin

论文摘要

世界卫生组织(WHO)宣布,Covid-19是3月11日是一种大流行病,因为几个国家和地区有118K病例。许多研究人员致力于预测确认案件的数量,因为预计案件的增长有助于政府采取棘手的决定来减轻其国家的封锁命令。这些命令帮助几个失业并支持严重影响企业的人。我们的研究旨在调查Google搜索趋势与全球各国的新型冠状病毒(Covid-19)之间的关系,以预测案件数量。根据WHO报告的确认案例数量,我们对相关Google搜索趋势的关键字进行了相关分析。之后,我们应用了几种机器学习技术(多个线性回归,非阴性整数回归,深神经网络),以根据历史数据以及混合数据(Google搜索趋势)来预测全球确认案例的数量。我们的结果表明,Google搜索趋势与所报告的确认案例的数量高度相关,其中深度学习方法的表现优于其他预测技术。我们认为,这不仅是预测确认的COVID-19案例的一种有希望的方法,而且还针对与相关的Google趋势相关的类似预测问题。

The World Health Organization (WHO) announced that COVID-19 was a pandemic disease on the 11th of March as there were 118K cases in several countries and territories. Numerous researchers worked on forecasting the number of confirmed cases since anticipating the growth of the cases helps governments adopting knotty decisions to ease the lockdowns orders for their countries. These orders help several people who have lost their jobs and support gravely impacted businesses. Our research aims to investigate the relation between Google search trends and the spreading of the novel coronavirus (COVID-19) over countries worldwide, to predict the number of cases. We perform a correlation analysis on the keywords of the related Google search trends according to the number of confirmed cases reported by the WHO. After that, we applied several machine learning techniques (Multiple Linear Regression, Non-negative Integer Regression, Deep Neural Network), to forecast the number of confirmed cases globally based on historical data as well as the hybrid data (Google search trends). Our results show that Google search trends are highly associated with the number of reported confirmed cases, where the Deep Learning approach outperforms other forecasting techniques. We believe that it is not only a promising approach for forecasting the confirmed cases of COVID-19, but also for similar forecasting problems that are associated with the related Google trends.

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