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Autori
Petrella, Lea
Bernardi, Mauro
Bottone, Marco

Titolo
Unified Bayesian conditional autoregressive risk measures using the skew exponential power distribution
Periodico
Statistical methods & applications : Journal of the Italian Statistical Society
Anno: 2021 - Volume: 30 - Fascicolo: 3 - Pagina iniziale: 1079 - Pagina finale: 1107

Conditional Autoregressive Value-at-Risk and Conditional Autoregressive Expectile have become two popular approaches for direct measurement of market risk. Since their introduction several improvements both in the Bayesian and in the classical framework have been proposed to better account for asymmetry and local non-linearity. Here we propose a unified Bayesian Conditional Autoregressive Risk Measures approach by using the Skew Exponential Power distribution. Further, we extend the proposed models using a semiparametric P-Spline approximation answering for a flexible way to consider the presence of non-linearity. To make the statistical inference we adapt the MCMC algorithm proposed in Bernardi et al. (2018) to our case. The effectiveness of the whole approach is demonstrated using real data on daily return of five stock market indices



SICI: 1618-2510(2021)30:3<1079:UBCARM>2.0.ZU;2-S

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