4.6 Article

A Branch and Bound algorithm for multidimensional Holder optimization: Estimation of the age-dependent viral hepatitis A infection force

期刊

MATHEMATICS AND COMPUTERS IN SIMULATION
卷 217, 期 -, 页码 311-326

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ELSEVIER
DOI: 10.1016/j.matcom.2023.10.024

关键词

Multidimensional optimization; Holder functions; Branch and bound methods; Alpha dense space fitting curves; Modelling of the viral hepatitis A; SEIRD model; Seroprevalence; Infection force; Linear predictor; Logit link

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This paper proposes a branch and bound multidimensional Holder optimization method, which converts a multivariate objective function into a single variable function and minimizes it using an iterative optimization method. The method is applied to solve a parameters identification problem resulting from the increase in infections, providing information about the prevalence and infection force.
In the present framework, we develop a branch and bound multidimensional Holder optimiza-tion method. This method is composed of two subroutines. The first one allows converting the multivariate objective function into a single variable one using the alpha-dense space fitting curves. In the second subroutine, we minimize the single variable function resulting from the first subroutine. To achieve this task, we develop a novel iterative optimization method reducing the feasible region in each iteration taking into account the property of Holder of the objective function. We apply this method to solve a parameters identification problem resulting from the modelling of the spread of viral hepatitis A in the central west of Tunisia following the increase in the number of infections. The Tunisian health authorities wanted to know the prevalence and the infection force of the virus in order to identify the situation and take the necessary measures. The modelling leads to a minimization problem of the least square multivariate error between the observed values and the theoretical ones. Besides, we implement the proposed method in some numerical experiments to evaluate its efficiency.

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