Journal of Computational and Applied Mathematics2022,Vol.40313.DOI:10.1016/j.cam.2021.113862

Data-driven and distribution-free estimation of tailed-related risks for GARCH models using composite asymmetric least squares regression

Zhao, Jun Zhang, Yi Wu, Sheng Shen, Liming
Journal of Computational and Applied Mathematics2022,Vol.40313.DOI:10.1016/j.cam.2021.113862

Data-driven and distribution-free estimation of tailed-related risks for GARCH models using composite asymmetric least squares regression

Zhao, Jun 1Zhang, Yi 2Wu, Sheng 2Shen, Liming3
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作者信息

  • 1. Zhejiang Univ City Coll
  • 2. Zhejiang Univ
  • 3. Bank Hangzhou
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Abstract

In this paper, we propose a two-step procedure to estimate tail-related risks like VaR and ES for the GARCH model. We inventively put forward the composite asymmetric least squares (CALS) regression to estimate the volatility structure and distinguish it from the innovation process in the GARCH model. Then noting that expectile bridges the gap between VaR and ES, we introduce the empirical likelihood method to determine these relations. Accordingly, a new optimization algorithm is proposed. Compared with the existing grid-search method, this new proposed method is data-driven and distribution free, and shares better estimation accuracy and computational efficiency. Monte Carlo simulation studies and empirical analysis also indicate that our proposed method is superior to some alternative existing tail-related risk estimation methods. (C) 2021 Elsevier B.V. All rights reserved.

Key words

Empirical likelihood/Asymmetric least squares/Tail-related risks/GARCH models/EMPIRICAL LIKELIHOOD

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出版年

2022
Journal of Computational and Applied Mathematics

Journal of Computational and Applied Mathematics

EISCI
ISSN:0377-0427
参考文献量30
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