Abbasimehr Hossein, Paki Reza, Bahrini Aram
Faculty of Information Technology and Computer Engineering Azarbaijan Shahid Madani University Tabriz Iran.
Department of Engineering Systems and Environment University of Virginia Charlottesville Virginia USA.
Math Methods Appl Sci. 2021 May 22. doi: 10.1002/mma.7500.
COVID-19 pandemic has affected all aspects of people's lives and disrupted the economy. Forecasting the number of cases infected with this virus can help authorities make accurate decisions on the interventions that must be implemented to control the pandemic. Investigation of the studies on COVID-19 forecasting indicates that various techniques such as statistical, mathematical, and machine and deep learning have been utilized. Although deep learning models have shown promising results in this context, their performance can be improved using auxiliary features. Therefore, in this study, we propose two hybrid deep learning methods that utilize the statistical features as auxiliary inputs and associate them with their main input. Specifically, we design a hybrid method of the multihead attention mechanism and the statistical features (ATT_FE) and a combined method of convolutional neural network and the statistical features (CNN_FE) and apply them to COVID-19 data of 10 countries with the highest number of confirmed cases. The results of experiments indicate that the hybrid models outperform their conventional counterparts in terms of performance measures. The experiments also demonstrate the superiority of the hybrid ATT_FE method over the long short-term memory model.
新冠疫情影响了人们生活的方方面面,扰乱了经济。预测感染这种病毒的病例数量有助于当局就为控制疫情而必须实施的干预措施做出准确决策。对新冠疫情预测研究的调查表明,已经采用了各种技术,如统计、数学以及机器学习和深度学习技术。尽管深度学习模型在这方面已显示出有前景的结果,但利用辅助特征可以提高其性能。因此,在本研究中,我们提出了两种混合深度学习方法,它们将统计特征用作辅助输入,并将其与主要输入相关联。具体而言,我们设计了一种多头注意力机制与统计特征的混合方法(ATT_FE)以及一种卷积神经网络与统计特征的组合方法(CNN_FE),并将它们应用于确诊病例数最多的10个国家的新冠疫情数据。实验结果表明,在性能指标方面,混合模型优于传统模型。实验还证明了混合ATT_FE方法优于长短期记忆模型。