Abstract
AbstractRecent empirical evidence suggests that the transmission coefficient in susceptible-exposed-infected-removed-like (SEIR-like) models evolves with time, presenting random patterns, and some stylized facts, such as mean-reversion and jumps. To address such observations we propose the use of jump-diffusion stochastic processes to parameterize the transmission coefficient in an SEIR-like model that accounts for death and time-dependent parameters. We provide a detailed theoretical analysis of the proposed model proving the existence and uniqueness of solutions as well as studying its asymptotic behavior. We also compare the proposed model with some variations possibly including jumps. The forecast performance of the considered models, using reported COVID-19 infections from New York City, is then tested in different scenarios, including major outbreaks. The proposed jump-diffusion model presented remarkably accurate out-of-sample predictions, even during larger forecasted periods.
Publisher
Cold Spring Harbor Laboratory
Reference58 articles.
1. M. Achterberg , B. Prasse , L. Ma , S. Trajanovski , M. Kitsak , and P. Van Mieghem , Comparing the accuracy of several network-based COVID-19 prediction algorithms, International Journal of Forecasting (2020).
2. Structural racism and COVID-19 response: higher risk of exposure drives disparate COVID-19 deaths among Black and Hispanic/Latinx residents of Illinois, USA
3. Nowcasting and Forecasting COVID-19 Waves: The Recursive and Stochastic Nature of Transmission;Royal Society Open Science,2022
4. V. Albani , M. Grasselli , W. Peng , and J. Zubelli , The interplay between covid-19 and the economy in canada, Journal of Risk and Financial Management 15 (2022), no. 10.
5. COVID-19 Underreporting and its Impact on Vaccination Strategies;BMC Infectious Diseases,2021