基于网络级移动信息的COVID-19深度扩散预测

Padmaksha Roy, Shailik Sarkar, Subhodip Biswas, Fanglan Chen, Zhiqian Chen, Naren Ramakrishnan, Chang-Tien Lu
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引用次数: 4

摘要

对传染病传播的时空性质进行建模,可以为理解疾病传播的时变方面以及在人们的流动模式中观察到的潜在的复杂空间依赖性提供有用的直觉。此外,还可以利用县级多个相关时间序列信息对单个时间序列进行预测。实时数据经常偏离单峰高斯分布假设,并可能显示出一些复杂的混合模式,这一事实增加了这一挑战。受此启发,我们开发了一种基于深度学习的时间序列概率预测模型,称为自回归混合密度动态扩散网络(ARM3Dnet),该模型将人的流动性和疾病传播视为动态有向图上的扩散过程。实现高斯混合模型层,考虑实时数据的多模态特性,同时从多个相关时间序列中学习。我们表明,当使用动态协变量特征和混合成分的最佳组合进行训练时,我们的模型在预测美国县一级的Covid-19死亡人数和病例数方面可以优于传统统计模型和深度学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep diffusion-based forecasting of COVID-19 by incorporating network-level mobility information
Modeling the spatiotemporal nature of the spread of infectious diseases can provide useful intuition in understanding the time-varying aspect of the disease spread and the underlying complex spatial dependency observed in people's mobility patterns. Besides, the county level multiple related time series information can be leveraged to make a forecast on an individual time series. Adding to this challenge is the fact that real-time data often deviates from the unimodal Gaussian distribution assumption and may show some complex mixed patterns. Motivated by this, we develop a deep learning-based time-series model for probabilistic forecasting called Auto-regressive Mixed Density Dynamic Diffusion Network (ARM3Dnet), which considers both people's mobility and disease spread as a diffusion process on a dynamic directed graph. The Gaussian Mixture Model layer is implemented to consider the multimodal nature of the realtime data while learning from multiple related time series. We show that our model, when trained with the best combination of dynamic covariate features and mixture components, can outperform both traditional statistical and deep learning models in forecasting the number of Covid-19 deaths and cases at the county level in the United States.
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