用降维扩展Markowitz模型:预测有效边界

Nolan Alexander, W. Scherer, M. Burkett
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引用次数: 3

摘要

马科维茨模型是一种既定的投资组合优化方法,它构建了有效的边界,允许用户在风险和回报之间做出最佳权衡。然而,这种方法的局限性在于,它假设未来的资产回报和协方差将与资产的历史数据相同,或者这些模型参数可以准确估计,这一概念在实践中往往不成立。马科维茨有效边界是可以由三个参数表示的平方根二阶多项式,因此提供了回溯协方差和资产增长的显着降维。利用这种降维,我们提出了对马科维茨模型的扩展,该模型解释了投资组合资产回报和协方差的非平稳行为,而无需预测复杂的协方差矩阵和资产增长,这已被证明是极其困难的。我们的方法允许用户使用时间序列回归预测三个有效的前沿系数。通过观察相似的有效边界,这个预测的有效边界可以用来选择最优的资产均值方差权衡(资产权重)。对于探索性测试,我们使用了一组跨越大部分市场的资产来演示和验证这种新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extending the Markowitz model with dimensionality reduction: Forecasting efficient frontiers
The Markowitz model is an established approach to portfolio optimization that constructs efficient frontiers allowing users to make optimal tradeoffs between risk and return. However, a limitation of this approach is that it assumes future asset returns and covariances will be identical to the asset's historical data, or that these model parameters can be accurately estimated, a notion which often does not hold in practice. Markowitz efficient frontiers are square root second-order polynomials that can be represented by three parameters, thus providing a significant dimensionality reduction of the lookback covariances and growth of the assets. Using this dimensionality reduction, we propose an extension to the Markowitz model that accounts for the nonstationary behavior of the portfolio assets' return and covariance without the necessity to forecast the complex covariance matrix and assets growths, something that has proven to be extremely difficult. Our methodology allows users to forecast the three efficient frontier coefficients using a time-series regression. By observing similar efficient frontiers, this forecasted efficient frontier can be used to select optimal assets mean-variance tradeoffs (asset weights). For exploratory testing we employ a set of assets that span a large portion of the market to demonstrate and validate this new approach.
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