Abbasimehr Hossein, Paki Reza
Faculty of Information Technology and Computer Engineering, Azarbaijan Shahid Madani University, Tabriz, Iran.
Chaos Solitons Fractals. 2021 Jan;142:110511. doi: 10.1016/j.chaos.2020.110511. Epub 2020 Nov 28.
COVID-19 virus has encountered people in the world with numerous problems. Given the negative impacts of COVID-19 on all aspects of people's lives, especially health and economy, accurately forecasting the number of cases infected with this virus can help governments to make accurate decisions on the interventions that must be taken. In this study, we propose three hybrid approaches for forecasting COVID-19 time series methods based on combining three deep learning models such as multi-head attention, long short-term memory (LSTM), and convolutional neural network (CNN) with the Bayesian optimization algorithm. All models are designed based on the multiple-output forecasting strategy, which allows the forecasting of the multiple time points. The Bayesian optimization method automatically selects the best hyperparameters for each model and enhances forecasting performance. Using the publicly available epidemical data acquired from Johns Hopkins University's Coronavirus Resource Center, we conducted our experiments and evaluated the proposed models against the benchmark model. The results of experiments exhibit the superiority of the deep learning models over the benchmark model both for short-term forecasting and long-horizon forecasting. In particular, the mean SMAPE of the best deep learning model is 0.25 for the short-term forecasting (10 days ahead). Also, for long-horizon forecasting, the best deep learning model obtains the mean SMAPE of 2.59.
新冠病毒给全世界的人们带来了诸多问题。鉴于新冠病毒对人们生活的各个方面,尤其是健康和经济产生的负面影响,准确预测感染该病毒的病例数量有助于政府就必须采取的干预措施做出准确决策。在本研究中,我们基于将多头注意力、长短期记忆(LSTM)和卷积神经网络(CNN)这三种深度学习模型与贝叶斯优化算法相结合,提出了三种用于预测新冠病毒时间序列的混合方法。所有模型均基于多输出预测策略设计,该策略允许对多个时间点进行预测。贝叶斯优化方法会自动为每个模型选择最佳超参数,并提高预测性能。我们使用从约翰·霍普金斯大学冠状病毒资源中心获取的公开可用疫情数据进行了实验,并将所提出的模型与基准模型进行了评估比较。实验结果表明,深度学习模型在短期预测和长期预测方面均优于基准模型。特别是,最佳深度学习模型在短期预测(提前10天)时的平均对称平均绝对百分比误差(SMAPE)为0.25。此外,在长期预测方面,最佳深度学习模型的平均SMAPE为2.59。