Estimation of value-at-risk by $$L^{p}$$ L p quantile regression
Peng Sun,
Fuming Lin (),
Haiyang Xu and
Kaizhi Yu
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Peng Sun: Sichuan University of Science and Engineering
Fuming Lin: Sichuan University of Science and Engineering
Haiyang Xu: Sichuan University of Science and Engineering
Kaizhi Yu: Southwestern University of Finance and Economics
Annals of the Institute of Statistical Mathematics, 2025, vol. 77, issue 1, No 2, 25-59
Abstract:
Abstract Exploring more accurate estimates of financial value at risk (VaR) has always been an important issue in applied statistics. To this end either quantile or expectile regression methods are widely employed at present, but an accumulating body of research indicates that $$L^{p}$$ L p quantile regression outweighs both quantile and expectile regression in many aspects. In view of this, the paper extends $$L^{p}$$ L p quantile regression to a general classical nonlinear conditional autoregressive model and proposes a new model called the conditional $$L^{p}$$ L p quantile nonlinear autoregressive regression model (CAR- $$L^{p}$$ L p -quantile model for short). Limit theorems for regression estimators are proved in mild conditions, and algorithms are provided for obtaining parameter estimates and the optimal value of p. Simulation study of estimation’s quality is given. Then, a CLVaR method calculating VaR based on the CAR- $$L^{p}$$ L p -quantile model is elaborated. Finally, a real data analysis is conducted to illustrate virtues of our proposed methods.
Keywords: Calculation of VaR; $$L^{p}$$ L p quantile regression; CLVaR models; GARCH models; CAR- $$L^{p}$$ L p -quantile models (search for similar items in EconPapers)
Date: 2025
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DOI: 10.1007/s10463-024-00911-y
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