Parameter estimation in epidemiology: From simple to complex dynamics

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Abstract

We revisit the parameter estimation framework for population biological dynamical systems, and apply it to calibrate various models in epidemiology with empirical time series, namely influenza and dengue fever. When it comes to more complex models like multi-strain dynamics to describe the virus-host interaction in dengue fever, even most recently developed parameter estimation techniques, like maximum likelihood iterated filtering, come to their computational limits. However, the first results of parameter estimation with data on dengue fever from Thailand indicate a subtle interplay between stochasticity and deterministic skeleton. The deterministic system on its own already displays complex dynamics up to deterministic chaos and coexistence of multiple attractors. © 2011 American Institute of Physics.

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APA

Aguiar, M., Ballesteros, S., Boto, J. P., Kooi, B. W., Mateus, L., & Stollenwerk, N. (2011). Parameter estimation in epidemiology: From simple to complex dynamics. In AIP Conference Proceedings (Vol. 1389, pp. 1248–1251). https://doi.org/10.1063/1.3637843

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