论文标题

美国对餐馆和酒吧的因果关系推论美国的餐馆和酒吧,美国每日案件:Google趋势分析

The Causality Inference of Public Interest in Restaurants and Bars on COVID-19 Daily Cases in the US: A Google Trends Analysis

论文作者

Mehrabadi, Milad Asgari, Dutt, Nikil, Rahmani, Amir M.

论文摘要

Covid-19冠状病毒大流行实际上影响了全球每个地区。在进行这项研究时,美国每日案件的数量比其他任何国家都多,并且大多数州的趋势正在增加。 Google趋势在不同时期内对各种主题的公众兴趣。使用数据挖掘方法分析这些趋势可能会提供有关COVID-19爆发的有用见解和观察结果。这项研究的目的是考虑不同搜索词(即酒吧和餐馆)在美国日常案件增加的预测能力。我们考虑了两种不同的搜索查询趋势,即餐厅和酒吧的因果关系,在美国前10个州/地区的每日积极案件中,每天最高和最低的新案例。此外,为了测量不同趋势的线性关系,我们使用了皮尔森相关性。我们的结果显示了每日案件数量较高的州/地区,这是与酒吧和餐馆有关的搜索查询的历史趋势,主要发生在重新开放之后,这显着影响了每日新案件。例如,加利福尼亚州在2020年6月7日对餐馆进行了大多数搜索,该餐馆在高峰后两周内影响了新案件的数量,以0.004的p值进行Granger的因果关系测试。尽管考虑了数量有限的搜索查询,但Google的餐馆和酒吧搜索趋势对美国每日新病例数量较高的地区的每日新病例显示出重大影响。我们表明,这种有影响力的搜索趋势可以用作每个区域新案例中预测任务的其他信息。这一预测可以帮助医疗保健领导者管理和控制共同爆发对社会的影响,并为成果做好准备。

The COVID-19 coronavirus pandemic has affected virtually every region of the globe. At the time of conducting this study, the number of daily cases in the United States is more than any other country, and the trend is increasing in most of its states. Google trends provide public interest in various topics during different periods. Analyzing these trends using data mining methods might provide useful insights and observations regarding the COVID-19 outbreak. The objective of this study was to consider the predictive ability of different search terms (i.e., bars and restaurants) with regards to the increase of daily cases in the US. We considered the causation of two different search query trends, namely restaurant and bars, on daily positive cases in top-10 states/territories of the United States with the highest and lowest daily new positive cases. In addition, to measure the linear relation of different trends, we used Pearson correlation. Our results showed for states/territories with higher numbers of daily cases, the historical trends in search queries related to bars and restaurants, which mainly happened after re-opening, significantly affect the daily new cases, on average. California, for example, had most searches for restaurants on June 7th, 2020, which affected the number of new cases within two weeks after the peak with the P-value of .004 for Granger's causality test. Although a limited number of search queries were considered, Google search trends for restaurants and bars showed a significant effect on daily new cases for regions with higher numbers of daily new cases in the United States. We showed that such influential search trends could be used as additional information for prediction tasks in new cases of each region. This prediction can help healthcare leaders manage and control the impact of COVID-19 outbreaks on society and be prepared for the outcomes.

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