Using Internet Search Data to Forecast COVID-19 Trends: A Systematic Review

Simin Ma, Yan Sun, Shihao Yang
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引用次数: 2

Abstract

Since the outbreak of the coronavirus disease pandemic (COVID-19) at the end of 2019, many scientific groups have been working towards solutions to forecast outbreaks. Accurate forecasts of future waves could mitigate the devastating effects of the virus. They would allow healthcare organizations and governments to alter public intervention, allocate healthcare resources accordingly, and raise public awareness. Many forecasting models have been introduced, harnessing different underlying mechanisms and data sources. This paper provides a systematic review of forecasting models that utilize internet search information. The success of these forecasting models provides a strong support for the big-data insight of public online search behavior as an alternative signal to the traditional surveillance system and mechanistic compartmental models.
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利用互联网搜索数据预测COVID-19趋势:系统综述
自2019年底冠状病毒病大流行(COVID-19)爆发以来,许多科学团体一直在研究预测疫情的解决方案。对未来疫情的准确预测可以减轻该病毒的破坏性影响。它们将允许医疗保健组织和政府改变公共干预,相应地分配医疗保健资源,并提高公众意识。已经引入了许多预测模型,利用不同的潜在机制和数据源。本文对利用互联网搜索信息的预测模型进行了系统的综述。这些预测模型的成功为公众在线搜索行为的大数据洞察提供了强有力的支持,作为传统监控系统和机械分区模型的替代信号。
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