• Medientyp: Bericht; E-Book
  • Titel: Shrinkage estimation of large covariance matrices: Keep it simple, statistician?
  • Beteiligte: Ledoit, Olivier [Verfasser:in]; Wolf, Michael [Verfasser:in]
  • Erschienen: Zurich: University of Zurich, Department of Economics, 2020
  • Sprache: Englisch
  • DOI: https://doi.org/10.5167/uzh-172202
  • Schlagwörter: random matrix theory ; large-dimensional asymptotics ; C13 ; rotation equivariance
  • Entstehung:
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  • Beschreibung: Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally shrunk by recombining sample eigenvectors with a (potentially nonlinear) function of the unobservable population covariance matrix. The optimal shape of this function reflects the loss/risk that is to be minimized. We solve the problem of optimal covariance matrix estimation under a variety of loss functions motivated by statistical precedent, probability theory, and differential geometry. A key ingredient of our nonlinear shrinkage methodology is a new estimator of the angle between sample and population eigenvectors, without making strong assumptions on the population eigenvalues. We also introduce a broad family of covariance matrix estimators that can handle all regular functional transformations of the population covariance matrix under large-dimensional asymptotics. In addition, we compare via Monte Carlo simulations our methodology to two simpler ones from the literature, linear shrinkage and shrinkage based on the spiked covariance model. ; This version: February 2020
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