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Global Optimization of the Scenario Generation and Portfolio Selection Problems

机译:场景生成和投资组合选择问题的全局优化

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摘要

We consider the global optimization of two problems arising from financial applications. The first problem originates from the portfolio selection problem when high-order moments are taken into account. The second issue we address is the problem of scenario generation. Both problems are non-convex, large-scale, and highly relevant in financial engineering. For the two problems we consider, we apply a new stochastic global optimization algorithm that has been developed specifically for this class of problems. The algorithm is an extension to the constrained case of the so called diffusion algorithm. We discuss how a financial planning model (of realistic size) can be solved to global optimality using a stochastic algorithm. Initial numerical results are given that show the feasibility of the proposed approach.
机译:我们考虑对财务应用引起的两个问题进行全局优化。当考虑高阶矩时,第一个问题来自投资组合选择问题。我们解决的第二个问题是方案生成的问题。这两个问题都是非凸的,大规模的,并且在金融工程中高度相关。对于我们考虑的两个问题,我们应用了专门针对此类问题开发的新的随机全局优化算法。该算法是对所谓的扩散算法的约束情况的扩展。我们讨论了如何使用随机算法将(实际大小的)财务计划模型求解为全局最优。初步数值结果表明了该方法的可行性。

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