Department of Applied Mathematics and Computational Sciences, PSG College of Technology, Coimbatore 641004, India.
Caterpillar Inc. Chennai, India.
Math Biosci Eng. 2022 Jul 13;19(10):9983-10005. doi: 10.3934/mbe.2022466.
Aggregating a massive amount of disease-related data from heterogeneous devices, a distributed learning framework called Federated Learning(FL) is employed. But, FL suffers in distributing the global model, due to the heterogeneity of local data distributions. To overcome this issue, personalized models can be learned by using Federated multitask learning(FMTL). Due to the heterogeneous data from distributed environment, we propose a personalized model learned by federated multitask learning (FMTL) to predict the updated infection rate of COVID-19 in the USA using a mobility-based SEIR model. Furthermore, using a mobility-based SEIR model with an additional constraint we can analyze the availability of beds. We have used the real-time mobility data sets in various states of the USA during the years 2020 and 2021. We have chosen five states for the study and we observe that there exists a correlation among the number of COVID-19 infected cases even though the rate of spread in each case is different. We have considered each US state as a node in the federated learning environment and a linear regression model is built at each node. Our experimental results show that the root-mean-square percentage error for the actual and prediction of COVID-19 cases is low for Colorado state and high for Minnesota state. Using a mobility-based SEIR simulation model, we conclude that it will take at least 400 days to reach extinction when there is no proper vaccination or social distance.
从异构设备中聚合大量疾病相关数据,采用称为联邦学习 (FL) 的分布式学习框架。但是,由于局部数据分布的异构性,FL 在分发全局模型时会遇到困难。为了克服这个问题,可以通过使用联邦多任务学习 (FMTL) 来学习个性化模型。由于来自分布式环境的异构数据,我们提出了一种通过联邦多任务学习 (FMTL) 学习的个性化模型,使用基于移动性的 SEIR 模型来预测美国 COVID-19 的更新感染率。此外,我们使用基于移动性的 SEIR 模型和一个附加约束来分析床位的可用性。我们在 2020 年和 2021 年期间使用了美国各个州的实时移动数据。我们选择了五个州进行研究,我们观察到即使每个病例的传播速度不同,COVID-19 感染病例的数量之间存在相关性。我们将每个美国州视为联邦学习环境中的一个节点,并在每个节点上构建一个线性回归模型。我们的实验结果表明,科罗拉多州的 COVID-19 实际病例和预测病例的均方根百分比误差较低,而明尼苏达州的误差较高。使用基于移动性的 SEIR 模拟模型,我们得出结论,当没有适当的疫苗接种或社交距离时,至少需要 400 天才能达到灭绝。