A Robust and Non-parametric Model for Prediction of Dengue Incidence

Chakraborty, Atlanta ; Chandru, Vijay (2020) A Robust and Non-parametric Model for Prediction of Dengue Incidence Journal of the Indian Institute of Science, 100 (4). pp. 893-899. ISSN 0970-4140

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Official URL: http://doi.org/10.1007/s41745-020-00202-4

Related URL: http://dx.doi.org/10.1007/s41745-020-00202-4

Abstract

Disease surveillance is essential not only for the prior detection of outbreaks, but also for monitoring trends of the disease in the long run. In this paper, we aim to build a tactical model for the surveillance of dengue, in particular. Most existing models for dengue prediction exploit its known relationships between climate and socio-demographic factors with the incidence counts; however, they are not flexible enough to capture the steep and sudden rise and fall of the incidence counts. This has been the motivation for the methodology used in our paper. We build a non-parametric, flexible, Gaussian process (GP) regression model that relies on past dengue incidence counts and climate covariates, and show that the GP model performs accurately, in comparison with the other existing methodologies, thus proving to be a good tactical and robust model for health authorities to plan their course of action.

Item Type:Article
Source:Copyright of this article belongs to Springer Nature Switzerland AG
Keywords:Epidemic;Dengue;Non-parametric;Gaussian process;Covariance;Kernel;Robust;Tactical model
ID Code:132567
Deposited On:20 Dec 2022 05:02
Last Modified:20 Dec 2022 05:02

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