Combining Multivariate Volatility Forecasts: An Economic-Based Approach

J. Caldeira, G. V. Moura, F. Nogales, Andre A. P. Santos
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引用次数: 13

Abstract

We devise a novel approach to combine predictions of high-dimensional conditional covariance matrices using economic criteria based on portfolio selection. The combination scheme takes into account not only the portfolio objective function but also the portfolio characteristics in order to define the mixing weights. Three important advantages are that i) it does not require a proxy for the latent conditional covariance matrix, ii) it does not require optimization of the combination weights, and iii) can be calibrated in order to adjust the influence of the best performing models. Empirical application involving a data set with 50 assets over a 10-year time span shows that the proposed economic-based combinations of multivariate volatility forecasts leads to mean–variance portfolios with higher risk-adjusted performance in terms of Sharpe ratio as well as to minimum variance portfolios with lower risk on an out-of-sample basis with respect to a number of benchmark specifications.
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结合多元波动率预测:基于经济的方法
我们设计了一种新的方法来结合高维条件协方差矩阵的预测,使用基于投资组合选择的经济标准。该组合方案既考虑组合目标函数,又考虑组合特性来确定混合权值。三个重要的优点是:i)它不需要潜在条件协方差矩阵的代理,ii)它不需要优化组合权重,以及iii)可以校准以调整最佳表现模型的影响。涉及50项资产10年时间跨度的数据集的实证应用表明,所提出的基于经济的多元波动率预测组合导致均值-方差投资组合在夏普比率方面具有更高的风险调整绩效,以及相对于许多基准规范,在样本外基础上具有更低风险的最小方差投资组合。
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