An Accurate Gaussian Process-Based Early Warning System for Dengue Fever

J. Albinati, Wagner Meira Jr, G. Pappa
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引用次数: 9

Abstract

Dengue fever is a mosquito-borne disease present in all Brazilian territory. Brazilian government, however, lacks an accurate early warning system to quickly predict future dengue outbreaks. Such system would help health authorities to plan their actions and to reduce the impact of the disease in the country. However, most attempts to model dengue fever use parametric models which enforce a specific expected behaviour and fail to capture the inherent complexity of dengue dynamics. Therefore, we propose a new Bayesian non-parametric model based on Gaussian processes to design an accurate and flexible model that outperforms previous/standard techniques and can be incorporated into an early warning system, specially at cities from Southeast and Center-West regions. The model also helps understanding dengue dynamics in Brazil through the analysis of the covariance functions generated.
基于高斯过程的登革热准确预警系统
登革热是一种蚊子传播的疾病,存在于巴西全境。然而,巴西政府缺乏一个准确的早期预警系统来快速预测未来的登革热疫情。这一系统将有助于卫生当局规划其行动并减少该病对该国的影响。然而,大多数对登革热建模的尝试都使用参数模型,这些模型强制执行特定的预期行为,未能捕捉登革热动力学的固有复杂性。因此,我们提出了一种新的基于高斯过程的贝叶斯非参数模型,以设计一个准确而灵活的模型,该模型优于以前的/标准技术,可以纳入预警系统,特别是在东南和中西部地区的城市。该模型还有助于通过分析生成的协方差函数来了解巴西的登革热动态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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