Nonlinear Shrinkage of the Covariance Matrix for Portfolio Selection: Markowitz Meets Goldilocks (original) (raw)
University of Zurich, Department of Economics, Working Paper No. 137
70 Pages Posted: 24 Jan 2014 Last revised: 9 Feb 2017
Date Written: February 2017
Abstract
Markowitz (1952) portfolio selection requires an estimator of the covariance matrix of returns. To address this problem, we promote a nonlinear shrinkage estimator that is more flexible than previous linear shrinkage estimators and has just the right number of free parameters (that is, the Goldilocks principle). This number is the same as the number of assets. Our nonlinear shrinkage estimator is asymptotically optimal for portfolio selection when the number of assets is of the same magnitude as the sample size. In backtests with historical stock return data, it performs better than previous proposals and, in particular, it dominates linear shrinkage.
Keywords: Large-dimensional asymptotics, Markowitz portfolio selection, nonlinear shrinkage
JEL Classification: C13, C58, G11
Suggested Citation: Suggested Citation
Ledoit, Olivier and Wolf, Michael, Nonlinear Shrinkage of the Covariance Matrix for Portfolio Selection: Markowitz Meets Goldilocks (February 2017). University of Zurich, Department of Economics, Working Paper No. 137, Available at SSRN: https://ssrn.com/abstract=2383361 or http://dx.doi.org/10.2139/ssrn.2383361