Uncertainty quantification in mechanistic epidemic models via cross-entropy approximate Bayesian computation

被引:0
|
作者
Americo Cunha Jr
David A. W. Barton
Thiago G. Ritto
机构
[1] Rio de Janeiro State University – UERJ,Institute of Mathematics and Statistics
[2] University of Bristol,Faculty of Engineering
[3] Federal University of Rio de Janeiro – UFRJ,Department of Mechanical Engineering
来源
Nonlinear Dynamics | 2023年 / 111卷
关键词
COVID-19 modeling; Machine learning; Uncertainty quantification; Cross-entropy method; ABC inference;
D O I
暂无
中图分类号
学科分类号
摘要
This paper proposes a data-driven approximate Bayesian computation framework for parameter estimation and uncertainty quantification of epidemic models, which incorporates two novelties: (i) the identification of the initial conditions by using plausible dynamic states that are compatible with observational data; (ii) learning of an informative prior distribution for the model parameters via the cross-entropy method. The new methodology’s effectiveness is illustrated with the aid of actual data from the COVID-19 epidemic in Rio de Janeiro city in Brazil, employing an ordinary differential equation-based model with a generalized SEIR mechanistic structure that includes time-dependent transmission rate, asymptomatics, and hospitalizations. A minimization problem with two cost terms (number of hospitalizations and deaths) is formulated, and twelve parameters are identified. The calibrated model provides a consistent description of the available data, able to extrapolate forecasts over a few weeks, making the proposed methodology very appealing for real-time epidemic modeling.
引用
收藏
页码:9649 / 9679
页数:30
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