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Predicting Spatio-Temporal Propagation of Seasonal Influenza Using Variational Gaussian Process Regression

机译:使用变分高斯过程回归预测季节性流感的时空繁殖

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Understanding and predicting how influenza propagates is vital to reduce its impact. In this paper we develop a nonparametric model based on Gaussian process (GP) regression to capture the complex spatial and temporal dependencies present in the data. A stochastic variational inference approach was adopted to address scalability. Rather than modeling the problem as a time-series as in many studies, we capture the space-time dependencies by combining different kernels. A kernel averaging technique which converts spatially-diffused point processes to an area process is proposed to model geographical distribution. Additionally, to accurately model the variable behavior of the time-series, the GP kernel is further modified to account for non-stationarity and seasonality. Experimental results on two datasets of state-wide US weekly flu-counts consisting of 19,698 and 89,474 data points, ranging over several years, illustrate the robustness of the model as a tool for further epidemiological investigations.
机译:理解和预测流感如何传播对减少其影响至关重要。在本文中,我们基于高斯进程(GP)回归开发了一个非参数模型,以捕获数据中存在的复杂空间和时间依赖关系。采用随机变分推理方法来解决可扩展性。而不是将问题建模为在许多研究中,我们通过组合不同的内核来捕获空中时间依赖性。提出了一种将空间扩散点处理转换为区域过程的内核平均技术,以模拟地理分布。另外,为了准确地模拟时间序列的可变行为,进一步修改了GP内核以解释非公平性和季节性。关于两个美国的每周流感计数的实验结果由19,698和89,474个数据点组成,在几年内,说明了模型作为进一步流行病学调查的工具的鲁棒性。

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