{"title":"Can Machine Learning Based Portfolios Outperform Traditional Risk-Based Portfolios? The Need to Account for Covariance Misspecification","authors":"Prayut Jain, Shashi Jain","doi":"10.3390/RISKS7030074","DOIUrl":null,"url":null,"abstract":"The Hierarchical risk parity (HRP) approach of portfolio allocation, introduced by Lopez de Prado (2016), applies graph theory and machine learning to build a diversified portfolio. Like the traditional risk-based allocation methods, HRP is also a function of the estimate of the covariance matrix, however, it does not require its invertibility. In this paper, we first study the impact of covariance misspecification on the performance of the different allocation methods. Next, we study under an appropriate covariance forecast model whether the machine learning based HRP outperforms the traditional risk-based portfolios. For our analysis, we use the test for superior predictive ability on out-of-sample portfolio performance, to determine whether the observed excess performance is significant or if it occurred by chance. We find that when the covariance estimates are crude, inverse volatility weighted portfolios are more robust, followed by the machine learning-based portfolios. Minimum variance and maximum diversification are most sensitive to covariance misspecification. HRP follows the middle ground; it is less sensitive to covariance misspecification when compared with minimum variance or maximum diversification portfolio, while it is not as robust as the inverse volatility weighed portfolio. We also study the impact of the different rebalancing horizon and how the portfolios compare against a market-capitalization weighted portfolio.","PeriodicalId":170198,"journal":{"name":"ERN: Forecasting Techniques (Topic)","volume":"30 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2019-05-26","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"21","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"ERN: Forecasting Techniques (Topic)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.3390/RISKS7030074","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 21
Abstract
The Hierarchical risk parity (HRP) approach of portfolio allocation, introduced by Lopez de Prado (2016), applies graph theory and machine learning to build a diversified portfolio. Like the traditional risk-based allocation methods, HRP is also a function of the estimate of the covariance matrix, however, it does not require its invertibility. In this paper, we first study the impact of covariance misspecification on the performance of the different allocation methods. Next, we study under an appropriate covariance forecast model whether the machine learning based HRP outperforms the traditional risk-based portfolios. For our analysis, we use the test for superior predictive ability on out-of-sample portfolio performance, to determine whether the observed excess performance is significant or if it occurred by chance. We find that when the covariance estimates are crude, inverse volatility weighted portfolios are more robust, followed by the machine learning-based portfolios. Minimum variance and maximum diversification are most sensitive to covariance misspecification. HRP follows the middle ground; it is less sensitive to covariance misspecification when compared with minimum variance or maximum diversification portfolio, while it is not as robust as the inverse volatility weighed portfolio. We also study the impact of the different rebalancing horizon and how the portfolios compare against a market-capitalization weighted portfolio.
Lopez de Prado(2016)提出了投资组合配置的层次风险平价(HRP)方法,该方法应用图论和机器学习来构建多元化投资组合。与传统的基于风险的分配方法一样,HRP也是协方差矩阵估计的函数,但不要求其可逆性。本文首先研究了协方差错配对不同分配方法性能的影响。接下来,我们研究了在适当的协方差预测模型下,基于机器学习的HRP是否优于传统的基于风险的投资组合。在我们的分析中,我们使用样本外投资组合表现的卓越预测能力测试,以确定观察到的超额表现是显著的还是偶然发生的。我们发现,当协方差估计粗糙时,逆波动率加权组合更稳健,其次是基于机器学习的组合。最小方差和最大多样化对协方差错配最为敏感。HRP遵循中间立场;与最小方差和最大多样化组合相比,它对协方差错配的敏感性较低,但鲁棒性不如逆波动率加权组合。我们还研究了不同再平衡水平的影响,以及投资组合与市值加权投资组合的比较。