投资组合优化中的Kelly准则:一个解耦问题

Zachariah Peterson
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引用次数: 2

摘要

凯利准则在赌徒和投资者中是众所周知的,它是一种在长期投注或投资中实现回报最大化的方法。这些思想在金融和自动化文献中的投资组合优化问题中明显缺失。本文将展示如何将Kelly准则纳入标准的投资组合优化模型中。这里开发的模型通过结合风险参数,将风险和回报组合成一个单一的目标函数。然后,使用微分进化算法对来自主要证券交易所的10只股票的投资组合求解该模型。蒙特卡罗计算用于验证从微分进化获得的结果的准确性。结果表明,进化算法可以成功地应用于解决投资组合优化问题,其中通过将Kelly准则应用于投资组合中的每个资产来计算回报。
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The Kelly criterion in portfolio optimization: a decoupled problem
Kelly's Criterion is well known among gamblers and investors as a method for maximizing the returns one would expect to observe over long periods of betting or investing. These ideas are conspicuously absent from portfolio optimization problems in the financial and automation literature. This paper will show how Kelly's Criterion can be incorporated into standard portfolio optimization models. The model developed here combines risk and return into a single objective function by incorporating a risk parameter. This model is then solved for a portfolio of 10 stocks from a major stock exchange using a differential evolution algorithm. Monte Carlo calculations are used to verify the accuracy of the results obtained from differential evolution. The results show that evolutionary algorithms can be successfully applied to solve a portfolio optimization problem where returns are calculated by applying Kelly's Criterion to each of the assets in the portfolio.
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