Portfolio Selection with Regularization

Ning Zhang, Jingnan Chen, Gengling Dai
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Abstract

We study the Markowitz mean-variance portfolio selection model under three types of regularizations: single-norm regularizations on individual stocks, mixed-norm regularizations on stock groups, and composite regularizations that combine the single-norm and mixed-norm regularizations. With mixed-norm regularizations incorporated, our model can accomplish group and stock selections simultaneously. Our empirical results using both US and global equity market data show that compared to the classical mean-variance portfolio, almost all regularized portfolios have better out-of-sample risk-adjusted performance measured by Sharpe ratio. In addition, stock selection and group screening accomplished by adding [Formula: see text] and [Formula: see text] regularizations respectively can lead to decreased volatility, turnover rate, and leverage ratio. Yet there are instances in which diversifying across different groups is more favorable, depending on the grouping methods. Moreover, we find a positive correlation between portfolio turnover and leverage. Heavily leveraged portfolios also have high turnover rates and thus high transaction costs.
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正则化下的投资组合选择
本文研究了三种类型的正则化下的Markowitz均值-方差投资组合选择模型:个股的单规范正则化,股票组的混合规范正则化,以及单规范和混合规范组合的复合正则化。通过混合范数的正则化,该模型可以同时完成组和股的选择。我们使用美国和全球股票市场数据的实证结果表明,与经典均值方差投资组合相比,几乎所有正则化投资组合都具有更好的样本外风险调整绩效(以夏普比率衡量)。此外,分别加入[公式:见文]和[公式:见文]正则化完成的选股和分组筛选,可以降低波动性、换手率和杠杆率。然而,在某些情况下,根据分组方法,在不同的组之间进行多样化是更有利的。此外,我们发现投资组合周转率与杠杆率呈正相关。高杠杆投资组合的换手率也很高,因此交易成本也很高。
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