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Publication
Bayesian nowcasting with Laplacian-P-splines
Journal Contribution - Journal Article
Abstract:During an epidemic, the daily number of reported infected cases, deaths or hospitalizations is often lower than the actual number due to reporting delays. Nowcasting aims to estimate the cases that have not yet been reported and combine it with the already reported cases to obtain an estimate of the daily cases. In this article, we present a fast and flexible Bayesian approach for nowcasting by combining P-splines and Laplace approximations. Laplacian-P-splines provide a flexible framework for nowcasting that is computationally less demanding as compared to traditional Markov chain Monte Carlo techniques. The proposed approach also permits to naturally quantify the prediction uncertainty. Model performance is assessed through simulations and the nowcasting method is applied to COVID-19 mortality and incidence cases in Belgium. Supplementary materials for this article are available online.
Published in: Journal of computational and graphical statistics
ISSN: 1061-8600
Volume: 34
Pages: 718 - 728
Publication year:2025
Keywords:Mathematics, Applied mathematics
Accessibility:Open
- See also: Bayesian Nowcasting with Laplacian-P-Splines
- See also: Bayesian Nowcasting with Laplacian-P-Splines