A robust genetic programming model for a dynamic portfolio insurance strategy

Siamak Dehghanpour, A. Esfahanipour
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引用次数: 4

Abstract

In this paper, we propose a robust genetic programming model for a dynamic strategy of stock portfolio insurance. With portfolio insurance strategy, we need to allocate part of the money in risky asset and the other part in risk-free asset. Our applied strategy is based on constant proportion portfolio insurance (CPPI) strategy. For determining the amount for investing in risky assets, the critical parameter is a constant risk multiplier which is used in traditional CPPI method so that it may not reflect the changes occurring in market condition. Thus, we propose a model in which, the risk multiplier is calculated with robust genetic programming. In our model, risk variables are used to generate equation trees for calculating the risk multiplier. We also implement an artificial neural network to enhance our model's robustness. We also combine the portfolio insurance strategy with a well-known portfolio optimization model to get the best possible portfolio weights of risky assets for insurance. Experimental results using five stocks from New York Stock Exchange (NYSE) show that our proposed robust genetic programming model outperforms the other two models: the basic genetic programming for portfolio insurance without portfolio optimization, and the basic genetic programming for portfolio insurance with portfolio optimization.
动态投资组合保险策略的鲁棒遗传规划模型
本文针对股票组合保险的动态策略,提出了一种鲁棒遗传规划模型。在投资组合保险策略中,我们需要将一部分资金配置在风险资产中,另一部分资金配置在无风险资产中。我们的应用策略是基于固定比例投资组合保险(CPPI)策略。在确定风险资产的投资金额时,关键参数是一个恒定的风险乘数,而传统的CPPI方法使用的是恒定的风险乘数,因此可能不能反映市场情况的变化。因此,我们提出了一个用鲁棒遗传规划计算风险乘数的模型。在我们的模型中,风险变量被用来生成计算风险乘数的方程树。我们还实现了一个人工神经网络来增强模型的鲁棒性。我们还将投资组合保险策略与一个著名的投资组合优化模型相结合,以获得保险风险资产的最佳投资组合权重。以纽约证券交易所(NYSE)的5只股票为例进行的实验结果表明,本文提出的稳健遗传规划模型优于不进行投资组合优化的组合保险基本遗传规划模型和进行投资组合优化的组合保险基本遗传规划模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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