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首页> 外文期刊>Journal of banking & finance >Size matters: Optimal calibration of shrinkage estimators for portfolio selection
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Size matters: Optimal calibration of shrinkage estimators for portfolio selection

机译:尺寸很重要:收缩估计量的最佳校准以选择产品组合

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摘要

We carry out a comprehensive investigation of shrinkage estimators for asset allocation, and we find that size matters-the shrinkage intensity plays a significant role in the performance of the resulting estimated optimal portfolios. We study both portfolios computed from shrinkage estimators of the moments of asset returns (shrinkage moments), as well as shrinkage portfolios obtained by shrinking the portfolio weights directly. We make several contributions in this field. First, we propose two novel calibration criteria for the vector of means and the inverse covariance matrix. Second, for the covariance matrix we propose a novel calibration criterion that takes the condition number optimally into account. Third, for shrinkage portfolios we study two novel calibration criteria. Fourth, we propose a simple multivariate smoothed bootstrap approach to construct the optimal shrinkage intensity. Finally, we carry out an extensive out-of-sample analysis with simulated and empirical datasets, and we characterize the performance of the different shrinkage estimators for portfolio selection.
机译:我们对资产分配的收缩估计量进行了全面调查,发现大小很重要-收缩强度在最终估计的最佳投资组合的绩效中起着重要作用。我们研究了两种通过资产收益率的收缩估计量(收缩时刻)计算的投资组合,以及通过直接收缩投资组合权重获得的收缩投资组合。我们在这一领域做出了一些贡献。首先,我们为均值向量和逆协方差矩阵提出了两种新颖的校准标准。其次,对于协方差矩阵,我们提出了一种新的校准准则,该准则将最优条件数考虑在内。第三,对于收缩组合,我们研究了两个新颖的校准标准。第四,我们提出了一种简单的多元平滑自举方法来构建最佳收缩强度。最后,我们使用模拟和经验数据集进行了广泛的样本外分析,并表征了不同收缩率估计量用于投资组合选择的性能。

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