Asymptotic results for sample autocovariance functions and extremes of integrated generalized Ornstein-Uhlenbeck processes
Vicky Fasen

TL;DR
This paper analyzes the asymptotic behavior of extremes and autocovariance functions of integrated generalized Ornstein-Uhlenbeck processes, including models like continuous-time ARCH and GARCH, using regular variation and point process convergence.
Contribution
It provides new asymptotic results for the extremes and autocovariance of genOU processes, extending understanding of continuous-time GARCH models.
Findings
Asymptotic distribution of extremes characterized
Sample autocovariance function behavior analyzed
Central limit theorem established for integrated process
Abstract
We consider a positive stationary generalized Ornstein--Uhlenbeck process \[V_t=\mathrm{e}^{-\xi_t}\biggl(\int_0^t\mathrm{e}^{\xi_{s-}}\ ,\mathrm{d}\eta_s+V_0\biggr)\qquadfor t\geq0,\] and the increments of the integrated generalized Ornstein--Uhlenbeck process , , where is a three-dimensional L\'{e}vy process independent of the starting random variable . The genOU model is a continuous-time version of a stochastic recurrence equation. Hence, our models include, in particular, continuous-time versions of and processes. In this paper we investigate the asymptotic behavior of extremes and the sample autocovariance function of and . Furthermore, we present a central limit result for…
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