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Title (eng)
Efficient nonparametric estimation of Toeplitz covariance matrices
Abstract (eng)
A new efficient nonparametric estimator for Toeplitz covariance matrices is proposed. This estimator is based on a data transformation that translates the problem of Toeplitz covariance matrix estimation to the problem of mean estimation in an approximate Gaussian regression. The resulting Toeplitz covariance matrix estimator is positive definite by construction, fully data driven and computationally very fast. Moreover, this estimator is shown to be minimax optimal under the spectral norm for a large class of Toeplitz matrices. These results are readily extended to estimation of inverses of Toeplitz covariance matrices. Also, an alternative version of the Whittle likelihood for the spectral density based on the discrete cosine transform is proposed.
Keywords (eng)
Discrete cosine transformPeriodogramSpectral densityVariance-stabilizing transformWhittle likelihood
Type (eng)
Language
[eng]
Persistent identifier
https://phaidra.univie.ac.at/o:2112575
Is in series
Title
Biometrika
Volume
111
Issue
3
ISSN
0006-3444
Issued
2024
From page
843
To page
864
Publication
Oxford University Press (OUP)
Date issued
2024
Zugangsberechtigungen (eng)
Rights statement (eng)
© 2024 Biometrika Trust
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Details
Object type
PDFDocument
Format
application/pdf
Created
03.01.2025 02:12:56
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