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Regularized hypervolume selection for robust portfolio optimization in dynamic environments

机译:规则化的超量选择,可在动态环境中进行可靠的投资组合优化

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This paper proposes a regularized hypervolume (S-Metric) selection algorithm. The proposal is used for incorporating stability and diversification in financial portfolios obtained by solving a temporal sequence of multi-objective Mean Variance Problems (MVP) on real-world stock data, for short to long-term rebalancing periods. We also propose the usage of robust statistics for estimating the parameters of the assets returns distribution so that we are able to test two variants (with and without regularization) on dynamic environments under different levels of instability. The results suggest that the maximum attaining Sharpe Ratio portfolios obtained for the original MVP without regularization are unstable, yielding high turnover rates, whereas solving the robust MVP with regularization mitigated turnover, providing more stable solutions for unseen, dynamic environments. Finally, we report an apparent conflict between stability in the objective space and in the decision space.
机译:本文提出了一种正则化超体积(S-Metric)选择算法。该提案用于将稳定性和分散性纳入金融投资组合中,该组合是通过对短期或长期的重新平衡期解决现实世界股票数据上的多目标均方差问题(MVP)的时间序列而获得的。我们还建议使用稳健的统计数据来估计资产收益分配的参数,以便我们能够在不同程度的不稳定情况下,在动态环境中测试两种变体(带和不带正则化)。结果表明,未经正则化处理的原始MVP获得的最大Sharpe比率投资组合不稳定,产生较高的周转率,而通过正则化解决健壮的MVP可以缓解周转率,为看不见的动态环境提供更稳定的解决方案。最后,我们报告了目标空间和决策空间中稳定性之间的明显冲突。

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