投资组合选择全正性下的协方差矩阵估计*

Raj Agrawal, Uma Roy, Caroline Uhler
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引用次数: 31

摘要

选择最优的马科维茨投资组合依赖于从历史数据的$T$时期估计$N$资产收益的协方差矩阵。问题是,$N$通常与$T$具有相同的阶数,这使得样本协方差矩阵估计器在经验和理论上都表现不佳。虽然金融经济学和统计学文献中已经引入了各种其他通用协方差矩阵估计器来处理这个问题的高维性,但我们在这里提出一个利用资产通常是正相关这一事实的估计器。这是通过假定收益的联合分布是2阶($\text{MTP}_2$)的多元全正来实现的。这种对协方差矩阵的约束不仅加强了资产之间的正相关性,而且使协方差矩阵正则化,从而产生理想的统计性质,如稀疏性。基于超过30年的股票市场数据,我们表明在$\text{MTP}_2$下估计协方差矩阵优于先前最先进的方法,包括收缩估计器和因子模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Covariance Matrix Estimation under Total Positivity for Portfolio Selection*
Selecting the optimal Markowitz porfolio depends on estimating the covariance matrix of the returns of $N$ assets from $T$ periods of historical data. Problematically, $N$ is typically of the same order as $T$, which makes the sample covariance matrix estimator perform poorly, both empirically and theoretically. While various other general purpose covariance matrix estimators have been introduced in the financial economics and statistics literature for dealing with the high dimensionality of this problem, we here propose an estimator that exploits the fact that assets are typically positively dependent. This is achieved by imposing that the joint distribution of returns be multivariate totally positive of order 2 ($\text{MTP}_2$). This constraint on the covariance matrix not only enforces positive dependence among the assets, but also regularizes the covariance matrix, leading to desirable statistical properties such as sparsity. Based on stock-market data spanning over thirty years, we show that estimating the covariance matrix under $\text{MTP}_2$ outperforms previous state-of-the-art methods including shrinkage estimators and factor models.
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