High-dimensional precision matrix estimation through GSOS with application in the foreign exchange market

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Authors

Kheyri, Azam
Bekker, Andriette, 1958-
Arashi, Mohammad

Journal Title

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Publisher

MDPI

Abstract

This article studies the estimation of the precision matrix of a high-dimensional Gaussian network. We investigate the graphical selector operator with shrinkage, GSOS for short, to maximize a penalized likelihood function where the elastic net-type penalty is considered as a combination of a norm-one penalty and a targeted Frobenius norm penalty. Numerical illustrations demonstrate that our proposed methodology is a competitive candidate for high-dimensional precision matrix estimation compared to some existing alternatives. We demonstrate the relevance and efficiency of GSOS using a foreign exchange markets dataset and estimate dependency networks for 32 different currencies from 2018 to 2021.

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DATA AVAILABILITY STATEMENT : The data under consideration in this study is in the public domain.

Keywords

Exchange rate, Gaussian graphical model, Graphical elastic net, High-penalized log-likelihood, Precision matrix estimation, Ridge estimation, SDG-08: Decent work and economic growth

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Citation

Kheyri, A.; Bekker, A.; Arashi, M. High-Dimensional Precision Matrix Estimation through GSOS with Application in the Foreign Exchange Market. Mathematics 2022, 10, 4232. https://DOI.org/10.3390/math10224232.