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首页> 外文期刊>The Journal of Risk >Genetic algorithm-based portfolio optimization with higher moments in global stock markets
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Genetic algorithm-based portfolio optimization with higher moments in global stock markets

机译:全球股市中基于动量的基于遗传算法的投资组合优化

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Markowitz's mean-variance portfolio model is widely used in the field of investment management. The changing dynamics of markets have resulted in higher uncertainties surrounding returns. Returns have often been found to be skewed and extreme events observed to be frequent. These characteristics are measured by skewness and kurtosis, which need to be accommodated in the definition of risk. They should also be included in the portfolio optimization process. The purpose of this paper is to investigate the impact of including higher moments in the estimation of risk in the process of international portfolio diversification. Our study is based on a sample of thirty-three globally traded stock market indexes, including emerging as well as developed markets, for the period between 2000 and 2012. Our inclusion of skewness and kurtosis makes portfolio optimization a nonlinear, nonconvex and multi-objective problem; this has been solved with the use of a genetic algorithm. Empirical results demonstrate that the higher moments model outperforms the traditional mean-variance model across the time period. The results of this study may be useful to fund managers, portfolio managers and investors, aiding them in understanding the behavior of the stock market and in selecting an optimal portfolio model among various alternative portfolio models.
机译:Markowitz的均值-方差投资组合模型被广泛用于投资管理领域。市场动态的变化导致收益的不确定性增加。人们常常发现回报率偏高,极端事件频繁发生。这些特征是通过偏度和峰度来衡量的,需要在风险定义中加以考虑。它们也应包括在投资组合优化过程中。本文的目的是调查在国际投资组合多元化过程中,在评估风险时纳入较高矩的影响。我们的研究基于2000年至2012年期间的33种全球交易的股票市场指数样本,包括新兴市场和发达市场。我们将偏度和峰度纳入考虑范围使投资组合优化成为非线性,非凸性和多目标的问题;这已经通过使用遗传算法解决了。实证结果表明,在整个时间段内,较高的矩模型优于传统的均值方差模型。这项研究的结果可能对基金经理,投资组合经理和投资者有用,有助于他们了解股票市场的行为以及在各种替代投资组合模型中选择最佳投资组合模型。

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