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Effectively Tackling Reinsurance Problems by Using Evolutionary and Swarm Intelligence Algorithms

机译:通过使用进化和群体智能算法有效地解决再保险问题

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摘要

This paper is focused on solving different hard optimization problems that arise in the field of insurance and, more specifically, in reinsurance problems. In this area, the complexity of the models and assumptions considered in the definition of the reinsurance rules and conditions produces hard black-box optimization problems -problems in which the objective function does not have an algebraic expression, but it is the output of a system - usually a computer program, which must be solved in order to obtain the optimal output of the reinsurance. The application of traditional optimization approaches is not possible in this kind of mathematical problem, so new computational paradigms must be applied to solve these problems. In this paper, we show the performance of two evolutionary and swarm intelligence techniques -evolutionary programming and particle swarm optimization-. We provide an analysis in three black-box optimization problems in reinsurance, where the proposed approaches exhibit an excellent behavior, finding the optimal solution within a fraction of the computational cost used by inspection or enumeration methods.
机译:本文的重点是解决保险领域,尤其是再保险问题中出现的各种困难的优化问题。在这一领域,再保险规则和条件的定义中考虑的模型和假设的复杂性产生了严峻的黑箱优化问题-问题中目标函数没有代数表达式,而是系统的输出-通常是计算机程序,必须解决该程序才能获得再保险的最佳输出。在此类数学问题中不可能应用传统的优化方法,因此必须采用新的计算范例来解决这些问题。在本文中,我们展示了两种进化和群体智能技术的性能-进化编程和粒子群优化-。我们对再保险中的三个黑箱优化问题进行了分析,其中所提出的方法表现出出色的性能,可以在检查或枚举方法使用的计算成本的一小部分内找到最佳解决方案。

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