基于堆叠长短期记忆网络的COVID-19病例时间序列预测

R. R. Maaliw, Zoren P. Mabunga, Frederick T. Villa
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引用次数: 3

摘要

2019冠状病毒病大流行严重破坏了世界经济,夺去了数百万人的生命。及时和准确的信息,如时间序列预测,对于政府、卫生保健系统、决策者和政策执行者在管理疾病进展方面至关重要。由于早期知识的潜在价值可以挽救无数生命,该研究调查并比较了复杂深度学习模型与传统时间序列预测方法的能力和鲁棒性。结果表明,堆叠长短期记忆网络(SLSTM)在15天的预测范围内优于指数平滑(ES)和自回归综合移动平均(ARIMA)模型。利用菲律宾、美国、印度和巴西4个国家2020年3月6日至2021年4月28日419天的历史数据,SLSTM的总体平均准确率为92.17%(确诊病例)和82.31%(死亡病例)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time-Series Forecasting of COVID-19 Cases Using Stacked Long Short-Term Memory Networks
The extent of the COVID-19 pandemic has devastated world economies and claimed millions of lives. Timely and accurate information such as time-series forecasting is crucial for government, healthcare systems, decision-makers, and policy-implementers in managing the disease's progression. With the potential value of early knowledge to save countless lives, the research investigated and compared the capabilities and robustness of sophisticated deep learning models to traditional time-series forecasting methods. The results show that the Stacked Long Short-Term Memory Networks (SLSTM) outperforms the Exponential Smoothing (ES) and Autoregressive Integrated Moving Average (ARIMA) models for a 15-day forecast horizon. SLSTM attained a collective mean accuracy of 92.17% (confirmed cases) and 82.31% (death cases) using historical data of 419 days from March 6, 2020 to April 28, 2021 of four countries - the Philippines, United States, India, and Brazil.
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