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Robust Estimation for the Single Index Model Using Pseudodistances

机译:使用伪距的单索引模型的鲁棒估计

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For portfolios with a large number of assets, the single index model allows for expressing the large number of covariances between individual asset returns through a significantly smaller number of parameters. This avoids the constraint of having very large samples to estimate the mean and the covariance matrix of the asset returns, which practically would be unrealistic given the dynamic of market conditions. The traditional way to estimate the regression parameters in the single index model is the maximum likelihood method. Although the maximum likelihood estimators have desirable theoretical properties when the model is exactly satisfied, they may give completely erroneous results when outliers are present in the data set. In this paper, we define minimum pseudodistance estimators for the parameters of the single index model and using them we construct new robust optimal portfolios. We prove theoretical properties of the estimators, such as consistency, asymptotic normality, equivariance, robustness, and illustrate the benefits of the new portfolio optimization method for real financial data.
机译:对于具有大量资产的投资组合,单一指数模型允许通过数量少得多的参数来表示单个资产收益之间的大量协方差。这就避免了使用大量样本来估计资产收益率的均值和协方差矩阵的约束,鉴于市场条件的动态变化,这实际上是不现实的。在单指数模型中估计回归参数的传统方法是最大似然法。尽管当完全满足模型时,最大似然估计器具有理想的理论属性,但是当数据集中存在异常值时,它们可能会给出完全错误的结果。在本文中,我们为单索引模型的参数定义了最小伪距估计量,并使用它们来构建新的鲁棒最优投资组合。我们证明了估计量的理论特性,例如一致性,渐近正态性,等方差,鲁棒性,并说明了针对真实财务数据的新投资组合优化方法的优势。

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