It is well-known that the transition function of the Ornstein-Uhlenbeck process solves the Fokker-Planck equation. This standard setting has been recently generalized in different directions, for example, by considering the so-called a-stable driven Ornstein-Uhlenbeck, or by time-changing the original process with an inverse stable subordinator. In both cases, the corresponding partial differential equations involve fractional derivatives (of Riesz and Riemann-Liouville types, respectively) and the solution is not Gaussian. We consider here a new model, which cannot be expressed by a random time-change of the original process: we start by a Fokker-Planck equation (in Fourier space) with the time-derivative replaced by a new fractional differential operator. The resulting process is Gaussian and, in the stationary case, exhibits long-range dependence. Moreover, we consider further extensions, by means of the so-called convolution-type derivative.
Long-memory Gaussian processes governed by generalized Fokker-Planck equations / Beghin, L.. - In: ALEA. - ISSN 1980-0436. - 16:1(2019), pp. 439-461. [10.30757/ALEA.V16-17]
Long-memory Gaussian processes governed by generalized Fokker-Planck equations
Beghin L.
2019
Abstract
It is well-known that the transition function of the Ornstein-Uhlenbeck process solves the Fokker-Planck equation. This standard setting has been recently generalized in different directions, for example, by considering the so-called a-stable driven Ornstein-Uhlenbeck, or by time-changing the original process with an inverse stable subordinator. In both cases, the corresponding partial differential equations involve fractional derivatives (of Riesz and Riemann-Liouville types, respectively) and the solution is not Gaussian. We consider here a new model, which cannot be expressed by a random time-change of the original process: we start by a Fokker-Planck equation (in Fourier space) with the time-derivative replaced by a new fractional differential operator. The resulting process is Gaussian and, in the stationary case, exhibits long-range dependence. Moreover, we consider further extensions, by means of the so-called convolution-type derivative.File | Dimensione | Formato | |
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