Abstract

Gaussian Volterra processes are processes of the form $(X_{t}:=\int _{\mathbf{T} }k(t,s)\mathrm{d} W_{s})_{t\in \mathbf{T} }$ where $(W_{t})_{t\in \mathbf{T} }$ is Brownian motion, and $k$ is a deterministic Volterra kernel. On integrating the kernel $k$ an information loss may occur, in the sense that the filtration of the Volterra process needs to be enlarged in order to recover the filtration of the driving Brownian motion. In this note we describe such enlargement of filtrations in terms of the Volterra kernel. For kernels of the form $k(t,s)=k(t-s)$ we provide a simple criterion to ensure that the aforementioned filtrations coincide.

Highlights

  • Let T be a time interval, say [0, T ] or R, and let (Wt)t∈T be a Brownian motion

  • In this note we describe such enlargement of filtrations in terms of the Volterra kernel

  • For kernels of the form k(t, s) = k(t − s) we provide a simple criterion to ensure that the aforementioned filtrations coincide

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Summary

Introduction

Let T be a time interval, say [0, T ] or R, and let (Wt)t∈T be a Brownian motion. Consider a process of the form. We can take T = R and the so-called Mandelbrot–Van Ness kernel (see [8]) defined by kH (t, s) Both alternatives lead to Volterra process with the same covariance structure, the filtrations generated in each case are different —see [7, 11]. In the former case the natural filtration generated by the Volterra process FX = (FtX )t∈T coincides with the natural filtration generated by the driving Brownian motion FW = (FtW )t∈T.

The result
Examples

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