This article proposes a class of goodness-of-fit tests for the autocorrelation function of a time series process, including those exhibiting long-range dependence. Test statistics for composite hypotheses are functionals of a (approximated) martingale transformation of the Bartlett T p-process with estimated parameters, which converges in distribution to the standard Brownian motion under the null hypothesis. We discuss tests of different natures such as omnibus, directional and Portmanteau-type tests. A Monte Carlo study illustrates the performance of the different tests in practice. © Institute of Mathematical Statistic, 2005.
CITATION STYLE
Delgado, M. A., Hidalgo, J., & Velasco, C. (2005). Distribution free goodness-of-fit tests for linear processes. Annals of Statistics, 33(6), 2568–2609. https://doi.org/10.1214/009053605000000606
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