In late 2019, COVID-19, a severe respiratory disease, emerged, and since then, the world has been facing a deadly pandemic caused by it. This ongoing pandemic has had a significant effect on different aspects of societies. The uncertainty around the number of daily cases made it difficult for decision-makers to control the outbreak. Deep Learning models have proved that they can come in handy in many real-world problems such as healthcare ones. However, they require a lot of data to learn the features properly and output an acceptable solution. Since COVID-19 has been a lately emerged disease, there was not much data available, especially in the first stage of the pandemic, and this shortage of data makes it challenging to design an optimized model. To overcome these problems, we first introduce a new dataset with augmented features and then forecast COVID-19 cases with a new approach, using an evolutionary neural architecture search with Binary Bat Algorithm (BBA) to generate an optimized deep recurrent network. Finally, to show our approach's effectiveness, we conducted a comparative study on Iran's COVID-19 daily cases. The results prove our approach's capability to generate an accurate deep architecture to forecast the pandemic cases, even in the early stages with limited data.
翻译:2019年后期,出现了一种严重的呼吸道疾病COVID-19, 这是一种严重的呼吸道疾病,自那以后,世界一直面临着由它引起的致命的流行病。这一持续流行的流行病对社会的不同方面产生了重大影响。每天病例数目的不确定性使得决策者难以控制疫情的爆发。深层次学习模型证明,在许多现实世界问题中,如保健问题等,这些模型是有用的。然而,它们需要大量数据来正确了解其特征并产生一个可接受的解决办法。由于COVID-19是最近出现的一种疾病,因此没有多少可用的数据,特别是在流行病的第一阶段,而这种数据短缺使得设计优化模式成为挑战。为了克服这些问题,我们首先采用具有强化特征的新数据集,然后用新办法预测COVID-19案例,利用Binary Bat Algorithm(BBA)的进化神经结构搜索来形成一个最优化的深度重复网络。最后,为了显示我们的方法的有效性,我们对伊朗的COVID-19日常案例进行了比较研究。结果证明,我们的方法在早期以有限的数据结构预测病例方面能力有限。