Engineering Proceedings | |
Forecasting Tangency Portfolios and Investing in the Minimum Euclidean Distance Portfolio to Maximize Out-of-Sample Sharpe Ratios | |
article | |
Nolan Alexander1  William Scherer1  | |
[1] Department of Systems Engineering, University of Virginia | |
关键词: modern portfolio theory; mean–variance optimization; tangency portfolio; forecasting; efficient frontier; asset allocation; | |
DOI : 10.3390/engproc2023039034 | |
来源: mdpi | |
【 摘 要 】
We propose a novel model to achieve superior out-of-sample Sharpe ratios. While most research in asset allocation focuses on estimating the return vector and covariance matrix, the first component of our novel model instead forecasts the future tangency portfolio, and the second component then determines the optimal investment portfolio. First, to forecast the tangency portfolio, we forecast the efficient frontier by decomposing its functional form, a square root second-order polynomial, into three interpretable coefficients, which can then be used to calculate a forecasted tangency portfolio. These coefficients can be forecasted using vector autoregressions. Second, the model invests in the portfolio on the efficient frontier that is the minimum Euclidean distance from this forecasted tangency portfolio. A motivation for our approach is to address the limitation that the tangency portfolio only maximizes the Sharpe ratio when future returns and covariances are stationary, and can be directly estimated with historical data, which often does not hold in out-of-sample data. Our approach addresses this shortcoming in a novel way by forecasting the tangency portfolio, rather than estimating return and covariance. For empirical testing, we employ two sets of assets that span the market to demonstrate and validate the performance of this novel method.
【 授权许可】
Unknown
【 预 览 】
Files | Size | Format | View |
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RO202307010005416ZK.pdf | 1312KB | download |