| A Method For FittingA pRARMAX Model: An Application To Financial DataFerreira, Marta; Canto e Castro, L.
 Proceedings of the World Congress on Engineering (WCE 2010), June 30 - July 2, 2010, London, U.K., Vol III (2010), 2022-2026 http://www.iaeng.org/publication/WCE2010/WCE2010_pp2022-2026.pdf
 
 Ferreira and Canto e Castro [6] introduces a power max-autoregressive process, in short pARMAX, as an alternative
 to heavy tailed ARMA. An extension of pARMAX was considered
 in Ferreira and Canto e Castro [7], by including a random
 component, and hence called pRARMAX, which makes the model more flexible to applications. It was then developed a
 methodology settled on minimizing the Bayes risk in  classification theory, but only considering standard uniform random components. We now extend this procedure to the more general Beta distribution. We illustrate the method with an application to a financial data series. In order to improve estimates of the exceedance probabilities of levels of interest, we use Bortot and Tawn [2] approach and derive a threshold-dependent extremal index which relates with the coefficient of tail dependence of Ledford
 and Tawn [8] and with the pRARMAX parameter.
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