Table of Contents
Fetching ...

Markov-modulated Ornstein-Uhlenbeck processes

Gang Huang, Marijn Jansen, Michel Mandjes, Peter Spreij, Koen De Turck

Abstract

In this paper we consider an Ornstein-Uhlenbeck (OU) process $(M(t))_{t\geqslant 0}$ whose parameters are determined by an external Markov process $(X(t))_{t\geqslant 0}$ on a finite state space $\{1,\ldots,d\}$; this process is usually referred to as Markov-modulated Ornstein-Uhlenbeck (MMOU). We use stochastic integration theory to determine explicit expressions for the mean and variance of $M(t)$. Then we establish a system of partial differential equations (PDEs) for the Laplace transform of $M(t)$ and the state $X(t)$ of the background process, jointly for time epochs $t=t_1,\ldots,t_K.$ Then we use this PDE to set up a recursion that yields all moments of $M(t)$ and its stationary counterpart; we also find an expression for the covariance between $M(t)$ and $M(t+u)$. We then establish a functional central limit theorem for $M(t)$ for the situation that certain parameters of the underlying OU processes are scaled, in combination with the modulating Markov process being accelerated; interestingly, specific scalings lead to drastically different limiting processes. We conclude the paper by considering the situation of a single Markov process modulating multiple OU processes.

Markov-modulated Ornstein-Uhlenbeck processes

Abstract

In this paper we consider an Ornstein-Uhlenbeck (OU) process whose parameters are determined by an external Markov process on a finite state space ; this process is usually referred to as Markov-modulated Ornstein-Uhlenbeck (MMOU). We use stochastic integration theory to determine explicit expressions for the mean and variance of . Then we establish a system of partial differential equations (PDEs) for the Laplace transform of and the state of the background process, jointly for time epochs Then we use this PDE to set up a recursion that yields all moments of and its stationary counterpart; we also find an expression for the covariance between and . We then establish a functional central limit theorem for for the situation that certain parameters of the underlying OU processes are scaled, in combination with the modulating Markov process being accelerated; interestingly, specific scalings lead to drastically different limiting processes. We conclude the paper by considering the situation of a single Markov process modulating multiple OU processes.

Paper Structure

This paper contains 4 sections, 1 theorem, 5 equations.

Key Result

Theorem \oldthetheorem

Define $\Gamma (t) := \int_{0}^{t} \gamma_{X (s)} \, {\rm d} s$. Then the stochastic process $(M(t))_{t \geqslant 0}$ given by is the unique mmou process with initial condition $M_0$. Conditional on the process $X$, the random variable $M \mathopen{}\mathclose{\left( t \right)$ has a Normal distribution with random mean

Theorems & Definitions (1)

  • Theorem \oldthetheorem