Bayesian penalized B-spline estimation approach for epidemic models |
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Authors: | Lixin Meng |
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Affiliation: | KLAS, and NENU Branch of Collaborative Innovation Center of Assessment toward Basic Education Quality, School of Mathematics and Statistics, Northeast Normal University, Changchun, Jilin, People's Republic of China |
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Abstract: | Ordinary differential equations (ODEs) are normally used to model dynamic processes in applied sciences such as biology, engineering, physics, and many other areas. In these models, the parameters are usually unknown, and thus they are often specified artificially or empirically. Alternatively, a feasible method is to estimate the parameters based on observed data. In this study, we propose a Bayesian penalized B-spline approach to estimate the parameters and initial values for ODEs used in epidemiology. We evaluated the efficiency of the proposed method based on simulations using the Markov chain Monte Carlo algorithm for the Kermack–McKendrick model. The proposed approach is also illustrated based on a real application to the transmission dynamics of hepatitis C virus in mainland China. |
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Keywords: | Bayesian method epidemic model Kermack–McKendrick model MCMC ordinary differential equation parameter estimation penalized B-spline |
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