Global Optimization for Automatic Model Points Selection in Life Insurance Portfolios
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Global Optimization for Automatic Model Points Selection in Life Insurance PortfoliosFecha
2021-02-25Cita bibliográfica
Ferreiro, A.M.; Ferri, E.; García, J.A.; Vázquez, C. Global Optimization for Automatic Model Points Selection in Life Insurance Portfolios. Mathematics 2021, 9, 472. https://doi.org/10.3390/math9050472
Resumen
[Abstract]
Starting from an original portfolio of life insurance policies, in this article we propose a methodology to select model points portfolios that reproduce the original one, preserving its market risk under a certain measure. In order to achieve this goal, we first define an appropriate risk functional that measures the market risk associated to the interest rates evolution. Although other alternative interest rate models could be considered, we have chosen the LIBOR (London Interbank Offered Rate) market model. Once we have selected the proper risk functional, the problem of finding the model points of the replicating portfolio is formulated as a problem of minimizing the distance between the original and the target model points portfolios, under the measure given by the proposed risk functional. In this way, a high-dimensional global optimization problem arises and a suitable hybrid global optimization algorithm is proposed for the efficient solution of this problem. Some examples illustrate the performance of a parallel multi-CPU implementation for the evaluation of the risk functional, as well as the efficiency of the hybrid Basin Hopping optimization algorithm to obtain the model points portfolio.
Palabras clave
Model points portfolio
Risk management
Risk functional
Hybrid optimization algorithms
LIBOR market model
Monte Carlo simulation
Risk management
Risk functional
Hybrid optimization algorithms
LIBOR market model
Monte Carlo simulation
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Derechos
Atribución 4.0 Internacional (CC BY 4.0)
ISSN
2227-7390