Optimal Shrinkage-Based Portfolio Selection in High Dimensions

Journal Article (2021)
Author(s)

Taras Bodnar (Stockholm University)

Yarema Okhrin (Universität Augsburg)

Nestor Parolya (TU Delft - Statistics)

Research Group
Statistics
Copyright
© 2021 Taras Bodnar, Yarema Okhrin, N. Parolya
DOI related publication
https://doi.org/10.1080/07350015.2021.2004897
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 Taras Bodnar, Yarema Okhrin, N. Parolya
Research Group
Statistics
Issue number
1
Volume number
41
Pages (from-to)
140-156
Reuse Rights

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Abstract

In this article, we estimate the mean-variance portfolio in the high-dimensional case using the recent results from the theory of random matrices. We construct a linear shrinkage estimator which is distribution-free and is optimal in the sense of maximizing with probability one the asymptotic out-of-sample expected utility, that is, mean-variance objective function for different values of risk aversion coefficient which in particular leads to the maximization of the out-of-sample expected utility and to the minimization of the out-of-sample variance. One of the main features of our estimator is the inclusion of the estimation risk related to the sample mean vector into the high-dimensional portfolio optimization. The asymptotic properties of the new estimator are investigated when the number of assets p and the sample size n tend simultaneously to infinity such that p/n→c∈(0,+∞). The results are obtained under weak assumptions imposed on the distribution of the asset returns, namely the existence of the 4+ε moments is only required. Thereafter we perform numerical and empirical studies where the small- and large-sample behavior of the derived estimator is investigated. The suggested estimator shows significant improvements over the existent approaches including the nonlinear shrinkage estimator and the three-fund portfolio rule, especially when the portfolio dimension is larger than the sample size. Moreover, it is robust to deviations from normality.

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