Zhang Jun, Zheng Nanning, Liu Mingyu, Yao Dingyi, Wang Yusong, Wang Jianji, Xin Jingmin
National Key Laboratory of Human-Machine Hybrid Augmented Intelligence, National Engineering Research Center for Visual Information and Applications, and Institute of Artificial Intelligence and Robotics, Xi'an Jiaotong University, Xi'an 710049, Shaanxi, China.
School of Software Engineering, Xi'an Jiaotong University, Xi'an 710049, Shaanxi, China.
Neurocomputing (Amst). 2023 May 14;534:161-170. doi: 10.1016/j.neucom.2023.02.065. Epub 2023 Mar 8.
The mutant strains of COVID-19 caused a global explosion of infections, including many cities of China. In 2020, a hybrid AI model was proposed by Zheng et al., which accurately predicted the epidemic in Wuhan. As the main part of the hybrid AI model, ISI method makes two important assumptions to avoid over-fitting. However, the assumptions cannot be effectively applied to new mutant strains. In this paper, a more general method, named the multi-weight susceptible-infected model (MSI) is proposed to predict COVID-19 in Chinese Mainland. First, a Gaussian pre-processing method is proposed to solve the problem of data fluctuation based on the quantity consistency of cumulative infection number and the trend consistency of daily infection number. Then, we improve the model from two aspects: changing the grouped multi-parameter strategy to the multi-weight strategy, and removing the restriction of weight distribution of viral infectivity. Experiments on the outbreaks in many places in China from the end of 2021 to May 2022 show that, in China, an individual infected by Delta or Omicron strains of SARS-CoV-2 can infect others within 3-4 days after he/she got infected. Especially, the proposed method effectively predicts the trend of the epidemics in Xi'an, Tianjin, Henan, and Shanghai from December 2021 to May 2022.
新冠病毒的变异毒株引发了全球范围内的感染大爆发,包括中国的许多城市。2020年,郑等人提出了一种混合人工智能模型,该模型准确预测了武汉的疫情。作为混合人工智能模型的主要部分,ISI方法做出了两个重要假设以避免过拟合。然而,这些假设无法有效地应用于新的变异毒株。本文提出了一种更通用的方法,即多权重易感-感染模型(MSI),用于预测中国大陆的新冠疫情。首先,基于累计感染数的数量一致性和每日感染数的趋势一致性,提出了一种高斯预处理方法来解决数据波动问题。然后,我们从两个方面对模型进行改进:将分组多参数策略改为多权重策略,并去除病毒传染性权重分布的限制。对2021年底至2022年5月中国多地疫情爆发的实验表明,在中国,感染新冠病毒德尔塔毒株或奥密克戎毒株的个体在感染后3-4天内就可以感染他人。特别是,所提出的方法有效地预测了2021年12月至2022年5月西安、天津、河南和上海等地的疫情趋势。