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Contribution Details

Type Journal Article
Scope Discipline-based scholarship
Title Quadratic shrinkage for large covariance matrices
Organization Unit
Authors
  • Olivier Ledoit
  • Michael Wolf
Item Subtype Original Work
Refereed Yes
Status Published in final form
Language
  • English
Journal Title Bernoulli
Publisher International Statistical Institute
Geographical Reach international
ISSN 1350-7265
Volume 28
Number 3
Page Range 1519 - 1547
Date 2022
Abstract Text This paper constructs a new estimator for large covariance matrices by drawing a bridge between the classic (Stein (1975)) estimator in finite samples and recent progress under large-dimensional asymptotics. The estimator keeps the eigenvectors of the sample covariance matrix and applies shrinkage to the inverse sample eigenvalues. The corresponding formula is quadratic: it has two shrinkage targets weighted by quadratic functions of the concentration (that is, matrix dimension divided by sample size). The first target dominates mid-level concentrations and the second one higher levels. This extra degree of freedom enables us to outperform linear shrinkage when the optimal shrinkage is not linear, which is the general case. Both of our targets are based on what we term the “Stein shrinker”, a local attraction operator that pulls sample covariance matrix eigenvalues towards their nearest neighbors, but whose force diminishes with distance (like gravitation). We prove that no cubic or higher-order nonlinearities beat quadratic with respect to Frobenius loss under large-dimensional asymptotics. Non-normality and the case where the matrix dimension exceeds the sample size are accommodated. Monte Carlo simulations confirm state-of-the-art performance in terms of accuracy, speed, and scalability.
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Digital Object Identifier 10.3150/20-bej1315
Other Identification Number merlin-id:23120
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Keywords Statistics and probability, inverse shrinkage, kernel estimation, large-dimensional asymptotics, signal amplitude, Stein shrinkage
Additional Information Earlier published as ECON Working Paper No. 335