单变量与多变量时间序列模型预测COVID-19的比较研究

K. Sreehari, M. Adham, Tom D Cheriya, Reshma Sheik
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引用次数: 1

摘要

COVID-19是由SARS-CoV-2病毒引起的疾病,已经并将继续对人类产生重大影响。这场大流行给全球经济造成了严重破坏,迫使各国政府采取严厉措施控制其传播。预测COVID-19的增长可以帮助医疗保健提供者、政策制定者、制造商和商人预测大流行的复发,并使公众对他们做出的决定有信心。现有的各种研究结果表明,时间序列技术可以学习和扩展,以正确预测未来有多少人会受到Covid-19的伤害。在本研究中,我们对单变量时间序列模型和多变量时间序列模型进行了比较分析,最终确定了一个更好的模型。因此,我们的目标是提出一个更适合预测全球流行病进展的时间序列模型,从而成为一个更可靠的模型。研究结果表明,多元时间序列模型对长期预测的效果明显优于单变量时间序列模型,单变量时间序列模型对短期预测的效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparative Study between Univariate and Multivariate Time Series Models for COVID-19 Forecasting
COVID-19, a disease produced by the SARS-CoV-2 virus, has had and continues to have a major influence on humankind. This pandemic has wreaked havoc on the global economy, pushing governments to take drastic steps to control its spread. Forecasting the growth of COVID-19 can assist healthcare providers, policymakers, manufacturers, and merchants predict the pandemic’s recurrence and the general public to have faith in the decisions made by them. Various existing findings showed that time-series techniques could learn and scale to properly anticipate how many people would be harmed by Covid-19 in the future. In this research, we did a comparative analysis of univariate time series models and multivariate time series models for confirming a better model at the end. As a result, we aim to bring out a time series model that is more suitable for forecasting the progression of pandemics worldwide, thus being a more reliable model. The research results showed that multivariate time series forecasting produced much better results for long-range than univariate time series models, which showed better results when expecting shorter periods.
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