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An Efficient Adaptive Real Coded Genetic Algorithm to Solve the Portfolio Choice Problem Under Cumulative Prospect Theory

机译:累积前景理论下解决资产组合选择问题的高效自适应实编码遗传算法

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摘要

Cumulative prospect theory (CPT) has become one of the most popular approaches for evaluating the behavior of decision makers under conditions of uncertainty. Substantial experimental evidence suggests that human behavior may significantly deviate from the traditional expected utility maximization framework when faced with uncertainty. The problem of portfolio selection should be revised when the investor's preference is for CPT instead of expected utility theory. However, because of the complexity of the CPT function, little research has investigated the portfolio choice problem based on CPT. In this paper, we present an operational model for portfolio selection under CPT, and propose a real-coded genetic algorithm (RCGA) to solve the problem of portfolio choice. To overcome the limitations of RCGA and improve its performance, we introduce an adaptive method and propose a new selection operator. Computational results show that the proposed method is a rapid, effective, and stable genetic algorithm.
机译:累积前景理论(CPT)已成为评估不确定性条件下决策者行为的最受欢迎方法之一。大量的实验证据表明,面对不确定性时,人类的行为可能会大大偏离传统的预期效用最大化框架。当投资者更喜欢CPT而不是期望效用理论时,应该修改投资组合选择的问题。但是,由于CPT函数的复杂性,很少有研究研究基于CPT的投资组合选择问题。在本文中,我们提出了一种基于CPT的投资组合选择的操作模型,并提出了一种实码遗传算法(RCGA)来解决投资组合选择的问题。为了克服RCGA的局限性并提高其性能,我们引入了一种自适应方法并提出了一种新的选择算子。计算结果表明,该方法是一种快速,有效,稳定的遗传算法。

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