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Empirical characteristic function tests for GARCH innovation distribution using multipliers
Authors:María Dolores Jiménez-Gamero  Juan Carlos Pardo-Fernández
Affiliation:1. Departamento de Estadística e I.O., Universidad de Sevilla, Spaindolores@us.es;3. Departamento de Estatística e I.O., Universidade de Vigo, Spain
Abstract:Goodness-of-fit tests for the innovation distribution in GARCH models based on measuring deviations between the empirical characteristic function of the residuals and the characteristic function under the null hypothesis have been proposed in the literature. The asymptotic distributions of these test statistics depend on unknown quantities, so their null distributions are usually estimated through parametric bootstrap (PB). Although easy to implement, the PB can become very computationally expensive for large sample sizes, which is typically the case in applications of these models. This work proposes to approximate the null distribution through a weighted bootstrap. The procedure is studied both theoretically and numerically. Its asymptotic properties are similar to those of the PB, but, from a computational point of view, it is more efficient.
Keywords:Characteristic function  consistency  GARCH model  goodness-of-fit  integral transformation  weighted bootstrap
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