Sohail Ayesha, Yu Zhenhua, Nutini Alessandro
Department of Mathematics, Comsats University Islamabad, Lahore Campus, Lahore, Pakistan.
Institute of Systems Security and Control, College of Computer Science and Technology, Xi'an University of Science and Technology, Xi'an, 710054 China.
Neural Process Lett. 2022 May 10:1-10. doi: 10.1007/s11063-022-10834-5.
The pandemics in the history of world health organization have always left memorable hallmarks, on the health care systems and on the economy of highly effected areas. The ongoing pandemic is one of the most harmful pandemics and is threatening due to its transformation to more contiguous variants. Here in this manuscript, we will first outline the variants and then their impact on the associated health issues. The deep learning algorithms are useful in developing models, from a higher dimensional problem/ dataset, but these algorithms fail to provide insight during the training process and do not generalize the conditions. Transfer learning, a new subfield of machine learning has acquired fame due to its ability to exploit the information/learning gained from a previous process to improve generalization for the next. In short, transfer learning is the optimization of the stored knowledge. With the aid of transfer learning, we will show that the stringency index and cardiovascular death rates were the most important and appropriate predictors to develop the model for the forecasting of the COVID-19 death rates.
世界卫生组织历史上的大流行疫情总是在医疗系统和受影响严重地区的经济上留下令人难忘的印记。当前这场大流行是最具危害性的大流行之一,因其不断演变成更具传染性的变种而构成威胁。在本手稿中,我们将首先概述这些变种,然后阐述它们对相关健康问题的影响。深度学习算法在从高维问题/数据集中开发模型方面很有用,但这些算法在训练过程中无法提供深入见解,也不能归纳各种情况。迁移学习作为机器学习的一个新子领域,因其能够利用从先前过程中获得的信息/知识来提高对下一个过程的归纳能力而声名鹊起。简而言之,迁移学习就是对存储知识的优化。借助迁移学习,我们将表明,严格指数和心血管死亡率是开发预测新冠死亡率模型的最重要且最合适的预测指标。