论文标题
Epicastring:用于预测流行病的合奏小波神经网络(EWNET)
Epicasting: An Ensemble Wavelet Neural Network (EWNet) for Forecasting Epidemics
论文作者
论文摘要
传染病仍然是全世界人类疾病和死亡的主要因素之一,其中许多疾病引起了流行的感染波。特定药物和可预防这些流行病的大多数疫苗的不可用,这使情况变得更糟。这些迫使公共卫生官员和政策制定者依靠由流行病的可靠预测产生的预警系统。对流行病的准确预测可以帮助利益相关者调整对手的反应,例如疫苗接种活动,员工计划和资源分配,以降低手头的情况,这可以转化为减少疾病影响的情况。不幸的是,由于这些流行病的扩散波动,这些流行病的散布波动是基于季节性依赖性变异性和这些流行病的性质,因此大多数过去的流行病都表现出非线性和非平稳性特征。我们使用基于最大重叠离散小波变换(MODWT)自动回应神经网络分析了各种流行时期时间序列数据集,并将其称为EWNET模型。 MODWT技术有效地表征了流行时间序列中的非平稳行为和季节性依赖性,并在拟议的集合小波网络框架中改善了自回归神经网络的非线性预测方案。从非线性时间序列的角度来看,我们探讨了所提出的EWNET模型的渐近平稳性,以显示相关的Markov链的渐近行为。从理论上讲,我们还研究了学习稳定性的效果和提案中隐藏的神经元的选择。从实际的角度来看,我们将我们提出的EWNET框架与几种统计,机器学习和深度学习模型进行了比较。实验结果表明,与最先进的流行预测方法相比,所提出的EWNET具有很高的竞争力。
Infectious diseases remain among the top contributors to human illness and death worldwide, among which many diseases produce epidemic waves of infection. The unavailability of specific drugs and ready-to-use vaccines to prevent most of these epidemics makes the situation worse. These force public health officials and policymakers to rely on early warning systems generated by reliable and accurate forecasts of epidemics. Accurate forecasts of epidemics can assist stakeholders in tailoring countermeasures, such as vaccination campaigns, staff scheduling, and resource allocation, to the situation at hand, which could translate to reductions in the impact of a disease. Unfortunately, most of these past epidemics exhibit nonlinear and non-stationary characteristics due to their spreading fluctuations based on seasonal-dependent variability and the nature of these epidemics. We analyse a wide variety of epidemic time series datasets using a maximal overlap discrete wavelet transform (MODWT) based autoregressive neural network and call it EWNet model. MODWT techniques effectively characterize non-stationary behavior and seasonal dependencies in the epidemic time series and improve the nonlinear forecasting scheme of the autoregressive neural network in the proposed ensemble wavelet network framework. From a nonlinear time series viewpoint, we explore the asymptotic stationarity of the proposed EWNet model to show the asymptotic behavior of the associated Markov Chain. We also theoretically investigate the effect of learning stability and the choice of hidden neurons in the proposal. From a practical perspective, we compare our proposed EWNet framework with several statistical, machine learning, and deep learning models. Experimental results show that the proposed EWNet is highly competitive compared to the state-of-the-art epidemic forecasting methods.