Stable limits for sums of dependent infinite variance random variables

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The aim of this paper is to provide conditions which ensure that the affinely transformed partial sums of a strictly stationary process converge in distribution to an infinite variance stable distribution. Conditions for this convergence to hold are known in the literature. However, most of these results are qualitative in the sense that the parameters of the limit distribution are expressed in terms of some limiting point process. In this paper we will be able to determine the parameters of the limiting stable distribution in terms of some tail characteristics of the underlying stationary sequence. We will apply our results to some standard time series models, including the GARCH(1, 1) process and its squares, the stochastic volatility models and solutions to stochastic recurrence equations.
Original languageEnglish
JournalProbability Theory and Related Fields
Volume150
Issue number3-4
Pages (from-to) 337-372
ISSN0178-8051
DOIs
Publication statusPublished - 2011

    Research areas

  • Stationary sequence, Stable limit distribution, Weak convergence, Mixing, Weak dependence, Characteristic function, Regular variation, GARCH, Stochastic volatility model, ARMA process

ID: 36006265