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Comparison theorem and stability under perturbation of transition rate matrices for regime-switching processes

Published online by Cambridge University Press:  14 September 2023

Jinghai Shao*
Affiliation:
Tianjin University
*
*Postal address: Center for Applied Mathematics, Tianjin University, Tianjin 300072, China. Email: [email protected]
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Abstract

A comparison theorem for state-dependent regime-switching diffusion processes is established, which enables us to pathwise-control the evolution of the state-dependent switching component simply by Markov chains. Moreover, a sharp estimate on the stability of Markovian regime-switching processes under the perturbation of transition rate matrices is provided. Our approach is based on elaborate constructions of switching processes in the spirit of Skorokhod’s representation theorem varying according to the problem being dealt with. In particular, this method can cope with switching processes in an infinite state space and not necessarily of birth–death type. As an application, some known results on the ergodicity and stability of state-dependent regime-switching processes can be improved.

Type
Original Article
Copyright
© The Author(s), 2023. Published by Cambridge University Press on behalf of Applied Probability Trust

1. Introduction

Stochastic processes with regime-switching have been extensively studied in many research fields due to their characterization of random changes of the environment between different regimes; see, for instance, [Reference Cloez and Hairer4, Reference Ghosh, Arapostathis and Marcus8, Reference Guo and Zhang9, Reference Mao and Yuan13, Reference Nguyen, Yin and Zhu17, Reference Shao18, Reference Shao19, Reference Shao and Xi22, Reference Yin and Zhu28, Reference Zhang31] and references therein. In particular, when the switching of the environment depends on the state of the dynamic system studied, usually called a state-dependent regime-switching process (RSP), the properties of such a system become much more complicated due to their intensive interaction. The monograph [Reference Yin and Zhu28] introduced various properties of state-dependent RSPs, telling us that it is a very challenging task to provide easily verifiable conditions to justify the ergodicity and stability of state-dependent RSPs.

In view of the relatively abundant results on state-independent RSPs, it is natural to simplify a state-dependent RSP into a state-independent one. So, we need to establish some kind of comparison theorem for state-dependent RSPs. Such an idea has been used in many works. For instance, [Reference Cloez and Hairer4] used this idea to study the exponential ergodicity in the Wasserstein distance for birth–death-type state-dependent RSPs based on an application of the weak Harris’s theorem. The state-dependent switching process and the constructed state-independent process constitute a coupling process. However, the constructed coupling process in [Reference Cloez and Hairer4] is no longer a Markovian process and needs modification in applications (cf. [Reference Cloez and Hairer4, Remark 3.10]). Majda and Tong used the same method to study the exponential ergodicity in the setting of piecewise deterministic processes with regime-switching and applied their results to tropical stochastic lattice models. In [Reference Shao20], the author constructed a Markovian coupling for birth–death-type state-dependent RSPs; this was extended in [Reference Shao and Xi22] to a general case under the condition of the existence of an order-preserving coupling for Markov chains (cf. [Reference Shao and Xi22, Lemma 2.7]). This result is not constructive, and the verification of [Reference Shao and Xi22, Assumption 2.6] is not easy in applications.

Accordingly, our first purpose is to establish a comparison theorem for more general state-dependent RSPs, in particular to get rid of the restriction of birth–death-type switching and to be applicable to switching processes in an infinitely countable state space. Our comparison theorem is in the pathwise sense. As a consequence, the corresponding results in [Reference Cloez and Hairer4, Reference Majda and Tong12, Reference Shao20, Reference Shao and Xi22] can be generalized after certain necessary modifications.

For state-dependent RSPs, study of the Feller property and the smooth dependence of initial values is of great interest. It is quite different to that of Markovian RSPs and diffusion processes, as noted in [Reference Nguyen, Yin and Zhu17], [Reference Xi27], [Reference Yin and Zhu28, Chapter 2], and references therein. For instance, in [Reference Nguyen, Yin and Zhu17, Theorem 3.1], the continuous differentiability of the continuous component of an RSP with respect to the initial value in $L^p$ with $p \in (0,1)$ was proved under suitable regular conditions. Moreover, restricted to a bounded set, certain gradient estimates associated with the continuous component of an RSP can be derived from [Reference Nguyen, Yin and Zhu17, Theorem 4.1]. Recently, [Reference Shao and Zhao24] studied the continuous dependence of initial values for state-dependent RSPs, which are solutions to certain stochastic functional differential equations with regime-switching. As shown in [Reference Shao and Zhao24], the key point is the estimate for the quantity

(1.1) \begin{equation} \Theta(t, \Lambda,\tilde \Lambda)\,:\!=\,\frac 1t\int_0^t \mathbb P\big(\Lambda_s\neq \tilde \Lambda_s\big)\,\mathrm{d}s, \qquad t>0.\end{equation}

Moreover, it was also shown in [Reference Shao and Yuan23] that the quantity $\Theta(t,\Lambda,\tilde \Lambda)$ plays a crucial role in study of the stability of RSPs under perturbation of the Q-matrix. However, the estimates in [Reference Shao and Yuan23, Reference Shao and Zhao24] do not work for switching processes in an infinite state space, which needs to be generalized from the viewpoint of applications. Also, the estimation of $\Theta(t,\Lambda,\tilde\Lambda)$ develops the classical perturbation theory for Markov chains (cf. [Reference Mitrophanov14, Reference Mitrophanov15, Reference Mitrophanov16, Reference Zeifman and Isaacson29]). More details on this are given in Section 3.

Our improvements in the previous two concerned problems are all based on a new observation on Skorokhod’s representation theorem for jumping processes. The approach of using Skorokhod’s representation theorem to study RSPs has been widely used in the literature; see, e.g., [Reference Ghosh, Arapostathis and Marcus8, Reference Nguyen, Yin and Zhu17, Reference Shao18, Reference Shao and Yuan23, Reference Yin and Zhu28], etc. The basic idea of Skorokhod’s representation theorem is to represent the switching process in terms of an integral with respect to a Poisson random measure based on a sequence of constructed intervals on the real line. The length of each interval is determined by $(q_{ij}(x))$ . However, the impact of the construction and sort order of the intervals on the jumping processes obtained has been neglected in all the previous works. In this work, we show that it is necessary to carry out different constructions of the intervals to solve different problems. This is illustrated through establishing the comparison theorem and studying the stability problem under perturbation of the Q-matrix.

This work is organized as follows. In Section 2, we first provide the construction of the coupling process, then establish the comparison theorem for state-dependent RSPs. As an illustrative example, we use this comparison theorem to study the stability of state-dependent RSPs. In Section 3, we also first provide the construction of the coupling process $(\Lambda_t,\tilde \Lambda_t)$ in (1.1), the key point of which is the construction of intervals used in Skorokhod’s representation theorem. Then we provide an estimate of (1.1) which improves the one given in [Reference Shao and Yuan23].

2. Comparison theorem for state-dependent RSPs

Let $\mathcal S=\{1,2,\ldots,N\}$ with $2\leq N\leq \infty$ . So, $\mathcal S$ is allowed to be an infinitely countable state space by taking $N=\infty$ . Consider

(2.1) \begin{equation} \mathrm{d} X_t=b(X_t,\Lambda_t)\,\mathrm{d} t+\sigma(X_t,\Lambda_t)\,\mathrm{d} B_t,\end{equation}

where $b\,:\,\mathbb R^d\times\mathcal S\to \mathbb R^d$ , $\sigma\,:\,\mathbb R^d\times\mathcal S\to \mathbb R^{d\times d}$ satisfying suitable conditions, and $(B_t)$ is a d-dimensional Brownian motion. Here, $(\Lambda_t)$ is a jumping process on $\mathcal S$ satisfying

(2.2) \begin{equation} \mathbb P(\Lambda_{t+\delta}=j\mid\Lambda_t=i, X_t=x)=\begin{cases} q_{ij}(x)\delta +o(\delta) &\text{if $i\neq j$},\\[4pt] 1+q_{ii}(x)\delta +o(\delta) &\text{if $i=j$,}\end{cases}\end{equation}

provided $\delta>0$ is sufficiently small. When $(q_{ij}(x))$ does not depend on x, $(X_t,\Lambda_t)$ is called a state-independent RSP or a Markovian RSP. Meanwhile, when $(q_{ij}(x))$ does depend on x, $(X_t,\Lambda_t)$ is called a state-dependent RSP, which is used to model the phenomenon that the dynamic system $(X_t)$ can impact the change rate of the random environment in applications. There is an intensive interaction between $(X_t)$ and $(\Lambda_t)$ for state-dependent RSPs, and hence it is quite desirable to develop a stochastic comparison theorem to simplify such a system. Since $(X_t)$ can be simplified, if necessary, by using a classical comparison theorem for diffusion processes (cf. [Reference Ikeda and Watanabe10, Reference Ikeda and Watanabe11]) or for Lévy processes (cf. [Reference Wang26]) performed separately in each fixed regime i, the key point is to control the jumping component $(\Lambda_t)$ whose transition rates vary with $(X_t)$ .

Theorem 2.1. Assume that the stochastic differential equations (SDEs) (2.1) and (2.2) admit a solution $(X_t,\Lambda_t)$ for any initial value $(X_0,\Lambda_0)=(x,i)\in\mathbb R^d\times \mathcal S$ . Suppose that $(q_{ij}(x))$ is conservative for every $x\in \mathbb R^d$ and satisfies

  1. (Q1) $K_0 \,:\!=\, \sup_{x\in\mathbb R^d}\sup_{i\in\mathcal S} |q_{ii}(x)|<\infty$ ;

  2. (Q2) for all $i\in\mathcal S$ , there is a $c_i \in \mathbb N$ such that $q_{ij}(x)=0$ for all $j\in \mathcal S$ with $|j- i|>c_i$ and all $x\in \mathbb R^d$ .

Define

\begin{equation*} q_{ij}^\ast=\begin{cases} \sup\limits_{x\in\mathbb R^d}\max\limits_{j<\ell\leq i}q_{\ell j}(x),\ &j<i,\\[15pt] \inf\limits_{x\in\mathbb R^d}\min\limits_{\ell\leq i} q_{\ell j}(x),\ &j>i,\\[15pt] -\sum_{i\neq j}q_{ij}^\ast, &j=i, \end{cases} \qquad \text{and}\qquad \bar q_{ij}=\begin{cases} \inf\limits_{x\in\mathbb R^d}\min\limits_{j<\ell\leq i} q_{\ell j}(x),\ &j<i,\\[15pt] \sup\limits_{x\in\mathbb R^d} \max\limits_{\ell\leq i} q_{\ell j}(x),\ &j>i,\\[15pt] -\sum_{j\neq i}\bar q_{ij}, &j=i. \end{cases} \end{equation*}

Then there exist two continuous-time Markov chains $\big(\Lambda^\ast_t\big)$ and $\big(\bar \Lambda_t\big)$ on $\mathcal S$ with transition rate matrices $\big(q_{ij}^\ast\big)$ and $\big(\bar q_{ij}\big)$ respectively such that

\begin{equation*} \mathbb P\big(\Lambda_t^\ast \leq \Lambda_t \leq \bar\Lambda_t \text{ for all } t\geq 0\big) = 1. \end{equation*}

Remark 2.1.

  1. (i) For birth–death-type $(q_{ij}(x))$ , i.e. $q_{ij}=0$ for $|i-j|\geq 2$ , we have

    \begin{alignat*}{2} q_{i(i-1)}^\ast & = \sup_{x\in\mathbb R^d}q_{i(i-1)}(x), \qquad & q_{i(i+1)}^\ast & = \inf_{x\in\mathbb R^d} q_{i(i+1)}(x), \\ \bar q_{i(i-1)} & = \inf_{x\in\mathbb R^d} q_{i(i-1)}(x), & \bar q_{i(i+1)} & = \sup_{x\in\mathbb R^d} q_{i(i+1)}(x). \end{alignat*}
    This coincides with the Markov chain constructed in [Reference Shao20].
  2. (ii) There are many works that investigate the existence of a solution to (2.1) and (2.2); see [Reference Yin and Zhu28] under Lipschitzian conditions, [Reference Shao18] under non-Lipschitzian conditions, and [Reference Zhang31] under integrable conditions.

  3. (iii) Assumption (Q1) ensures that there exists a unique Markov chain $\big(\Lambda_t^\ast\big)_{t\geq 0}$ $\Big(\big(\bar \Lambda_t\big)_{t\geq 0}\Big)$ associated with $\big(q_{ij}^\ast\big)$ $\big(\big(\bar q_{ij}\big)\big)$ ; see, e.g., [Reference Chen3, Corollary 2.24].

As mentioned in the introduction, this comparison theorem can help us to generalize the corresponding results in [Reference Cloez and Hairer4, Reference Majda and Tong12, Reference Shao20, Reference Shao and Xi22]. More precisely, we can remove Assumption 3.1 of birth–death-type restriction in [Reference Cloez and Hairer4] and generalize [Reference Cloez and Hairer4, Theorems 3.3, 3.4] there. Also, the exponential convergence results, [Reference Majda and Tong12, Theorems 2.1, 2.3], for the two stochastic lattice models for moist tropical convection in climate science studied can be generalized by considering more general jumping processes besides the birth–death processes used in [Reference Majda and Tong12].

As an illustrative example, we apply Theorem 2.1 to investigate the stability of state-dependent RSPs. The stability of stochastic processes with regime switching has been studied in many works. We refer the reader to [Reference Mao and Yuan13, Reference Yin and Zhu28] for surveys on this topic, and also to [Reference Shao and Xi21] for some recent results on the stability of state-dependent RSPs based on M-matrix theory, the Perron–Frobenius theorem, and the Friedholm alternative.

Theorem 2.2. Let $\big(X_t^{x,i}, \Lambda_t^{x,i}\big)$ be the solution to (2.1) and (2.2) with initial value (x,i). Assume that the conditions of Theorem 2.1 hold. Suppose that there exist a function $\rho\in C^2(\mathbb R^d)$ , constants $\beta_i\in\mathbb R$ for $i\in\mathcal S$ , and constants $p,\tilde c>0$ such that

(2.3) \begin{equation} \mathscr{L}^{\,\,(i)}\rho(x) \leq \beta_i \rho (x), \qquad \rho(x) \geq \tilde c|x|^p, \qquad x\in\mathbb R^d,\ i\in \mathcal S, \end{equation}

where

$$ \mathscr{L}^{\,\,(i)}\rho(x) = \sum_{k=1}^d b_k(x,i)\partial_k\rho(x) + \frac12\sum\limits_{k,l=1}^d a_{kl}(x,i)\partial_k\partial_l\rho(x), \qquad a_{kl}(x,i) = \sum\limits_{j=1}^d\sigma_{kj}(x,i)\sigma_{lj}(x,i). $$

Through reordering $\mathcal S$ , without loss of the generality we may assume that $(\beta_i)_{i\in\mathcal S}$ is nondecreasing. Let $\big(\bar q_{ij}\big)$ be defined as in Theorem 2.1. Assume that $\big(\bar q_{ij}\big)$ is irreducible, and admits a unique invariant probability measure $\bar\mu$ such that

(2.4) \begin{equation} \sum_{i\in\mathcal S}\bar\mu_i \beta_i<0. \end{equation}

Then there exists $p'\in (0,p]$ such that $\lim_{t\to \infty} \mathbb E\big|X_t^{x,i}\big|^{p'}=0$ for $x\in\mathbb R^d$ , $i\in\mathcal S$ .

Remark 2.2. In Theorem 2.2, via condition (2.3), we characterize the stability property of the process $(X_t)$ at each fixed state $i\in\mathcal S$ by a constant $\beta_i\in\mathbb R$ , which is measured under a common Lyapunov type function $\rho$ . Then, with the help of the auxiliary Markov chain $\big(\bar q_{ij}\big)$ , the average condition (2.4) yields the stability of $(X_t)$ .

Next, we provide an example to illustrate the application of Theorem 2.2.

Example 2.1. Consider $\mathrm{d} X_t=b_{\Lambda_t}X_t\,\mathrm{d} t+\sigma_{\Lambda_t} X_t\,\mathrm{d} B_t$ , where $(\Lambda_t)$ is a jumping process on $\mathcal S=\{1,2,3\}$ with the state-dependent transition rate matrix $(q_{ij}(x))_{i,j\in\mathcal S}$ given by $q_{ij}(x)=1+|i-j|(x^2\wedge 1)$ , $i,j\in\mathcal S$ , $x\in\mathbb R$ .

Take $\rho(x)=x^2$ in (2.3) to yield $\beta_i=2b_i+\sigma_i^2$ , $i\in\mathcal S$ . By virtue of Theorem 2.1, direct calculation yields

\begin{equation*} \big(\bar q_{ij}\big)_{i,j\in\mathcal S} = \begin{pmatrix} -5 &\quad 2 &\quad 3\\[2pt] 1&\quad -4 & \quad 3\\[2pt] 1&\quad 1&\quad -2 \end{pmatrix}, \end{equation*}

and its unique invariant probability measure is $(\bar\mu_1,\bar\mu_2,\bar\mu_3) = \big(\frac 16,\frac 7{30},\frac{3}{5}\big)$ . Then, by Theorem 2.2, if

\begin{equation*}\frac 16\big(2b_1+\sigma_1^2\big)+\frac7{30} \big(2b_2+\sigma_2^2\big)+\frac 35\big(2b_3+\sigma_3^2\big)<0,\end{equation*}

the process $(X_t)$ is stable in the sense that $\lim_{t\to \infty}\mathbb E\big[\big|X_t^{x,i}\big|^p\big]=0$ , $x\in \mathbb R$ , $i\in\mathcal S$ , for some $p\in (0,2]$ .

Example 2.2. Consider the regime-switching diffusion process $\mathrm{d}X_t = b_{\Lambda_t}X_t\,\mathrm{d}t + \sigma_{\Lambda_t}X_t\,\mathrm{d}B_t$ , and $(\Lambda_t)$ a jumping process on $\mathcal S=\{1,2,\ldots\}$ with state-dependent transition rate matrix $(q_{ij}(x))$ given by $q_{12}(x)=1+\sin x$ , $q_{1k}(x)=0$ if $k\geq 3$ , $q_{11}(x)=-1-\sin x$ , and, for $n\geq 2$ , $q_{n(n+1)}(x) = 1 + \sin x$ , $q_{n1}(x) = 3 - \sin x$ , $q_{nk}(x) = 0$ if $k\not\in\{1,n+1\}$ , and $q_{nn}(x)=-4$ . According to the definition of $\big(\bar q_{ij}\big)$ in Theorem 2.1, direct calculation yields $\bar q_{12}=2$ , $\bar q_{1k}=0$ if $k\geq 3$ , $\bar q_{11}=-2$ , and, for $n\geq 2$ , $\bar q_{n1}=2$ , $\bar q_{n(n+1)}=2$ , $\bar q_{nk}=0$ if $k\not\in \{1,n,n+1\}$ , $\bar q_{nn}=-4$ . The invariant probability measure $\bar\mu=(\bar\mu_n)_{n\in \mathcal S}$ for $\big(\bar q_{ij}\big)$ is given by $\bar\mu_n= 1/{2^n}$ , $n\geq 1$ . Take $\rho(x)=x^2$ , then $\rho\in C^2(\mathbb R)$ and $\mathscr{L}^{\,\,(i)}\rho(x)\leq \beta_i\rho(x)$ with $\beta_i=2b_i+\sigma_i^2$ , $i\in\mathcal S$ . According to Theorem 2.2, if

\begin{equation*}\sum_{n=1}^\infty \frac1{2^n}\big(2b_n+\sigma_n^2\big)<0,\end{equation*}

the process is stable in the sense that $\lim_{t\to\infty}\mathbb E\big[\big|X_t^{x,i}\big|^p\big]=0$ , $x\in \mathbb R$ , $i\in\mathcal S$ , for some $p\in (0,2]$ .

2.1. Construction of the coupling process

In the spirit of Skorokhod [Reference Skorokhod25] in the study of processes with rapid switching, [Reference Ghosh, Arapostathis and Marcus8] presented a representation of a Markov chain in terms of a Poisson random measure and studied the stability of RSPs. This kind of representation theorem has been widely applied in the study of various properties of RSPs.

Before giving out our precise representation theorem for establishing the comparison theorem, let us recall the construction in [Reference Ghosh, Arapostathis and Marcus8] for comparison. When $\mathcal S=\{1,2,\ldots,N\}$ is a finite state space, let $\Delta_{ij}(x)$ be consecutive, left-closed, right-open intervals on $[0,\infty)$ , each having length $q_{ij}(x)$ . More precisely,

\begin{align*} & \Delta_{12}(x) = [0,q_{12}(x)), \ \Delta_{13}(x) = [q_{12}(x),q_{12}(x)+q_{13}(x)), \ \ldots, \ \Delta_{1N}(x) = \big[\textstyle\sum_{j\neq 1} q_{1j}(x), q_1(x)\big), \\ & \Delta_{21}(x) = [q_1(x), q_1(x)+q_{21}(x)), \ \ldots, \\ & \quad \vdots\end{align*}

Define a function $h\,:\,\mathbb R^d\times \mathcal S\times \mathbb R\to \mathbb R$ by $h(x,i,z)=\sum_{j\in\mathcal S,j\neq i}(j-i) \textbf{1}_{\Delta_{ij}(x)}(z)$ . Then, $(\Lambda_t)$ is a jumping process satisfying (2.2) as a solution to the SDE $\mathrm{d}\Lambda_t = \int_{[0,\infty)}h(X_t,\Lambda_{t-},z)\,\mathcal{N}(\mathrm{d}t,\mathrm{d}z)$ , where $(X_t)$ satisfies (2.1), and $\mathcal{N}(\mathrm{d}t,\mathrm{d}z)$ is a Poisson random measure with intensity $\mathrm{d}t\times\mathrm{d}z$ .

We can now introduce our construction of the coupling process in three steps. We assume that conditions (Q1) and (Q2) hold in this section.

Step 1: Construction of intervals. For every fixed $x\in\mathbb R^d$ and $i,j\in \mathcal S$ , we define the intervals $\Gamma_{ij}(x)$ , $\Gamma_{ij}^\ast$ , and $\bar\Gamma_{ij}$ in the following way. Starting from 0, the intervals $\Gamma_{ij}(x)$ for $j<i$ are defined on the positive half-line, while $\Gamma_{ij}(x)$ for $j>i$ are defined on the negative half-line. More precisely,

(2.5) \begin{equation} \begin{aligned} \Gamma_{i1}(x) & = [0, q_{i1}(x)), \\ \Gamma_{i2}(x) & = [q_{i1}(x), q_{i1}(x) + q_{i2}(x)), \\ & \ \,\vdots \\ \Gamma_{i(i-1)}(x) & = \big[\textstyle\sum_{j=1}^{i-2}q_{ij}(x),\sum_{j=1}^{i-1} q_{ij}(x)\big), \end{aligned}\end{equation}

and

(2.6) \begin{equation} \begin{aligned} \Gamma_{i(i+c_i )}(x) & = [{-}q_{i(i+c_i )}(x), 0), \\ \Gamma_{i(i+c_i -1)}(x) & = [{-}q_{i(i+c_i -1)}(x)-q_{i(i+c_i )}(x), -q_{i(i+c_i )}(x)), \\ & \ \,\vdots \\ \Gamma_{i(i+1)}(x) & = \big[{-}\textstyle\sum_{j=i+1}^{i+c_i } q_{ij}(x), -\sum_{j=i+2}^{i+c_i } q_{ij}(x)\big), \end{aligned}\end{equation}

where $c_i$ is given in (Q2). Analogously, by replacing $q_{ij}(x)$ in (2.5) and (2.6) with $\bar q_{ij}$ and $q_{ij}^\ast$ respectively, we can define the intervals $\bar\Gamma_{ij}$ and $\Gamma_{ij}^\ast$ . Here and in what follows, we put $\Gamma_{ij}(x)=\emptyset$ if $q_{ij}(x)=0$ and $\Gamma_{ii}(x)=\emptyset$ for the convenience of notation. This convention also applies to the intervals $\bar \Gamma_{ij}$ and $\Gamma_{ij}^\ast$ .

The sort order of the intervals $\Gamma_{ij}(x)$ , $\bar \Gamma_{ij}$ , and $\Gamma_{ij}^\ast$ according to $j>i$ or $j<i$ will play an important role in the argument below. The assumption on the existence of $c_i$ is used here such that on the negative half-line, the first interval starting from 0 is associated with the state $j\in\mathcal S$ satisfying $j=\max\{k\in \mathcal S; k>i, q_{ik}(x)>0\}$ . The common starting point 0 of $\Gamma_{ij}(x)$ , $\bar\Gamma_{ij}$ , and $\Gamma_{ij}^\ast$ for different $i\in \mathcal S$ also plays an important role in our construction of the order-preservation coupling process.

Step 2: Explicit construction of Poisson random measure. Here we use the method of [Reference Ikeda and Watanabe11, Chapter I, p. 44] to present a concrete construction of the Poisson random measure. Denote by $\textbf{m}(\mathrm{d} x)$ the Lebesgue measure over $\mathbb R$ . Let $\xi_k$ , $k=1,2,\ldots$ , be random variables taking values in $[{-}K_0,K_0]$ with $\mathbb P(\xi_k \in \mathrm{d} x) = {\textbf{m}(\mathrm{d} x)}/{2K_0}$ , and $\tau_k$ , $k=1,2,\ldots$ , be non-negative random variables such that $\mathbb P(\tau_k>t)=\mathrm{e}^{-2tK_0}$ , $t\geq 0$ . Assume that all $\xi_k$ and $\tau_k$ , $k\geq 1$ , are mutually independent. Let $\zeta_n =\tau_1 +\tau_2 +\cdots+\tau_n $ , $ n=1,2,\ldots$ , and $\zeta_0 =0$ , $\mathcal D_{\textbf{p}} = \bigcup_{n\geq 1}\{\zeta_n\}$ , and $\textbf{p}(t)=\sum_{0\leq s<t}\Delta \textbf{p}(s)$ , with $\Delta \textbf{p}(s)=0$ for $s\not\in \mathcal D_{\textbf{p}}$ , and $\Delta\textbf{p}(\zeta_n )=\xi_n$ , $n\geq 1$ , where $\Delta\textbf{p}(s)\,:\!=\,\textbf{p}(s) -\textbf{p}(s{-})$ . The finiteness of $K_0$ means that $\lim_{n\to \infty}\zeta_n=\infty$ almost surely (a.s.); that is, during each finite time period, there exists a finite number of jumps for $(\textbf{p}(t))$ . Let

\begin{equation*} \mathcal{N}_{\textbf{p}}([0,t]\times A) = \#\{s\in \mathcal D_{\textbf{p}}; 0\leq s\leq t, \Delta \textbf{p}(s)\in A\},\qquad t>0,\,A\in \mathscr{B}(\mathbb R).\end{equation*}

As a consequence, $\textbf{p}(t)$ and $\mathcal{N}_{\textbf{p}}(\mathrm{d} t,\mathrm{d} z)$ are respectively a Poisson point process and a Poisson random measure with intensity measure $\mathrm{d} t\,\textbf{m}(\mathrm{d} x)$ . It is always assumed that $\textbf{p}(t)$ is independent of the Brownian motion $(B_t)$ in (2.1).

Step 3: Construction of coupling processes. Define three functions $\vartheta$ , $\vartheta^\ast$ , and $\bar\vartheta$ as follows:

\begin{align*} \vartheta(x,i,z)&=\sum_{j\in\mathcal S,j\neq i}(j-i)\textbf{1}_{\Gamma_{ij}(x)}(z),\\ \vartheta^\ast(i,z)&=\sum_{j\in\mathcal S,j\neq i}(j-i)\textbf{1}_{\Gamma_{ij}^\ast}(z),\\ \bar \vartheta(i,z)&=\sum_{j\in \mathcal S,j\neq i}(j-i)\textbf{1}_{\bar \Gamma_{ij}}(z).\end{align*}

Then, consider the following SDEs:

(2.7) \begin{align} \mathrm{d}\Lambda_t & = \int_{\mathbb R}\vartheta(X_t,\Lambda_{t-},z)\,\mathcal{N}_{\textbf{p}}(\mathrm{d}t,\mathrm{d}z), \end{align}
(2.8) \begin{align} \mathrm{d}\bar\Lambda_t & = \int_{\mathbb R}\bar\vartheta(\bar\Lambda_{t-},z)\,\mathcal{N}_{\textbf{p}}(\mathrm{d}t,\mathrm{d}z), \end{align}
(2.9) \begin{align} \mathrm{d}\Lambda_t^\ast & = \int_{\mathbb R}\vartheta^\ast\big(\Lambda_{t-}^\ast,z\big)\,\mathcal{N}_{\textbf{p}}(\mathrm{d}t,\mathrm{d}z), \end{align}

and $\Lambda_0=\bar \Lambda_0=\Lambda_0^\ast=i_0\in\mathcal S$ . Here, recall that $(X_t)$ satisfies (2.1).

The fact that the solution to (2.7) satisfies (2.2) can be checked directly using the property that $\mathbb P(\mathcal{N}_{\textbf{p}}((0,\delta]\times A)\geq 2)=o(\delta)$ , $\delta>0$ . Next, we verify that $\big(\bar \Lambda_t\big)$ and $\big(\Lambda_t^\ast\big)$ given by (2.8) and (2.9) are the jumping processes associated with $\big(\bar q_{ij}\big)$ and $\big(q_{ij}^\ast\big)$ respectively. According to Itô’s formula, for any bounded measurable function F on $\mathcal S$ ,

\begin{align*} \mathbb E F\big(\bar\Lambda_t\big) & = F\big(\bar \Lambda_0\big) + \mathbb E\int_0^t\int_{\mathbb R}\big(F\big(\bar\Lambda_{s-}+\bar\vartheta\big(\bar\Lambda_{s-},z\big)\big)-F\big(\bar\Lambda_{s-}\big)\big)\, \mathcal{N}_{\textbf{p}}(\mathrm{d}s,\mathrm{d}z) \\ & = F\big(\bar\Lambda_0\big) + \mathbb E\int_0^t\int_{\mathbb R}\sum_{j\in \mathcal S}\big(F(j)-F\big(\bar\Lambda_{s-}\big)\big) \textbf{1}_{\bar\Gamma_{\bar \Lambda_{s-}j}}(z)\,\mathrm{d}s\,\textbf{m}(\mathrm{d} z) \\ & = F\big(\bar\Lambda_0\big) + \mathbb E\int_0^t\sum_{j\in\mathcal S}\bar q_{\bar\Lambda_{s-}j}\big(F(j)-F\big(\bar \Lambda_{s-}\big)\big)\,\mathrm{d}s.\end{align*}

Writing $\bar P_t F(i_0)=\mathbb E F\big(\bar\Lambda_t\big)$ with $\bar\Lambda_0=i_0$ , we obtain from the above integral equation that $\bar P_tF(i_0) = F(i_0) + \int_0^t \bar P_s(\bar QF)\,\mathrm{d}s$ , where $\bar QF(i) = \sum_{j\in \mathcal S,j\neq i} \bar q_{ij}(F(j)-F(i))$ , and the corresponding differential form is

(2.10) \begin{equation} \frac{\mathrm{d} {\bar P}_t F}{\mathrm{d} t}= \bar P_t \bar QF.\end{equation}

Due to (Q1), the Kolmogorov forward equation (2.10) admits a unique solution, and hence $\big(\bar\Lambda_t\big)$ is a continuous-time Markov chain with transition rate matrix $\bar Q=\big(\bar q_{ij}\big)$ (cf. [Reference Chen3, Corollary 2.24]). The corresponding conclusion for $\big(\Lambda_t^\ast\big)$ can be proved by the same method.

Consequently, through the previous three steps, we have completed the construction of the desired Markov chains $\big(\Lambda_t^\ast\big)$ and $\big(\bar \Lambda_t\big)$ used in Theorem 2.1.

Remark 2.3. Our constructed coupling process $\big(X_t, \Lambda_t, \Lambda_t^\ast, \bar \Lambda_t\big)$ in terms of a common Poisson random measure presents a good order relation, and is not restricted to be of birth–death type. Let us compare it with the coupling constructed in [Reference Cloez and Hairer4] (presented in the argument of [Reference Cloez and Hairer4, Lemma 3.9]). In [Reference Cloez and Hairer4], the constructed Markov chain $(L_t)$ and the original jumping process $(\Lambda_t)$ will move independently of each other until the time when they meet. During their meeting time, the coupling is designed such that $\Lambda_t\geq L_t$ . After the meeting time, the two processes $\Lambda_t$ and $L_t$ locate at different states and then they move independently once again until the next meeting time. However, the restriction of jumping in a birth–death type could ensure that $\Lambda_t \geq L_t$ after the meeting time.

2.2. Proofs of the comparison theorem and its application

Let us first present the proof of the comparison theorem.

Proof of Theorem 2.1. We only provide the proof of $\Lambda_t\leq \bar\Lambda_t$ for all $t\geq 0$ almost surely; the corresponding solution for $\Lambda_t$ and $\Lambda_t^\ast$ can be proved in the same way.

According to the representation of (2.7) and (2.8), the processes $(\Lambda_t)$ and $\big(\bar \Lambda_t\big)$ have no jumps outside $\mathcal{D}_{\textbf{p}}$ . So, we only need to prove that

(2.11) \begin{equation} \mathbb P\big(\Lambda_t \leq \bar\Lambda_t,\ t\in \mathcal{D}_{\textbf{p}}\big) = 1. \end{equation}

By the definition of $\bar q_{ij}$ , for $j>i$ , $\bar q_{ij}\geq q_{lj}(x)$ for all $1\leq l\leq i$ and all $x\in \mathbb R^d$ ; for $j<i$ , $\bar q_{ij}\leq q_{lj}(x)$ for all $j< l\leq i$ and all $x\in \mathbb R^d$ . By the sort order of the intervals $\Gamma_{ij}(x)$ and $\bar\Gamma_{ij}$ , we have, for $i<k\in \mathcal S$ ,

(2.12) \begin{align} \bigcup_{r\geq m}\Gamma_{ir}(x) & \subset \bigcup_{r\geq m}\bar \Gamma_{kr} \qquad \text{for all } m>k \text{ and all } x\in \mathbb R^d, \end{align}
(2.13) \begin{align} \bigcup_{r\leq m}\Gamma_{ir}(x) & \supset \bigcup_{r\leq m}\bar \Gamma_{kr} \qquad \text{for all } m<i \text{ and all } x\in\mathbb R^d. \end{align}

Assuming $i=\Lambda_{\zeta_{n-1}}\leq \bar \Lambda_{\zeta_{n-1}}=k$ for some $n\geq 1$ , we are going to show that $\Lambda_{\zeta_{n}}\leq \bar \Lambda_{\zeta_n}$ , whose proof is divided into four cases.

For case (i), $\Lambda_{\zeta_n}=m\geq k$ , by (2.7) and the construction of the Poisson random measure $\mathcal{N}_{\textbf{p}}(\mathrm{d} t,\mathrm{d} z)$ , we get $\xi_n\in \Gamma_{im}\big(X_{\zeta_n}\big)$ . By (2.12), this yields that $\xi_n\in \bigcup_{r\geq m}\bar \Gamma_{kr}$ . Together with (2.8), this means that $\bar\Lambda_{\zeta_n}$ must jump into the set $\{l\in\mathcal S;\, l\geq m\}$ . Whence, $\Lambda_{\zeta_n}\leq \bar \Lambda_{\zeta_n}$ .

For case (ii), $\Lambda_{\zeta_n}=m$ with $i<m<k$ , (2.7) implies that $\xi_n\in \Gamma_{im}\big(X_{\zeta_n}\big)$ , and hence $\xi_n<0$ . So, $\xi_n\not\in \bigcup_{j\leq k}\bar \Gamma_{kj}\subset [0,\infty)$ , which means that $\bar\Lambda_{\zeta_n}$ cannot jump into the set $\{j\in\mathcal S; j\leq k\}$ , and hence $\Lambda_{\zeta_n}\leq \bar \Lambda_{\zeta_n}$ . But, if $\Lambda_{\zeta_n}=m$ with $m\leq i$ and $\bar\Lambda_{\zeta_n}\leq i$ , this situation is studied in case (iii).

For case (iii), $\Lambda_{\zeta_n}=m$ with $m\leq i$ and $\bar\Lambda_{\zeta_n}>i$ , it is obvious that $\Lambda_{\zeta_n}\leq \bar\Lambda_{\zeta_n}$ . If $\bar \Lambda_{\zeta_n}=m'\leq i$ , (2.8) and (2.13) yield $\xi_n\in \bar\Gamma_{km'}\subset \bigcup_{r\leq m'}\Gamma_{ir}\big(X_{\zeta_n}\big)$ . Whence, $\Lambda_{\zeta_n}$ jumps into $\{j\in \mathcal S;\, j\leq m'\}$ , and hence $\Lambda_{\zeta_n}\leq \bar \Lambda_{\zeta_n}$ still holds.

For case (iv), if $\bar \Lambda_{\zeta_n}=m$ with $i<m<k$ , then $\xi_n\in \bar \Gamma_{km}$ , $\xi_n>0$ , and $\xi_n\notin \bigcup_{j>i}\Gamma_{ij}\big(X_{\zeta_n}\big)$ . So, $\Lambda_{\zeta_n}\leq i<m=\bar \Lambda_{\zeta_n}$ .

Consequently, if $\Lambda_{\zeta_{n-1}}\leq \bar \Lambda_{\zeta_{n-1}}$ , we have $\Lambda_{\zeta_n}\leq \bar \Lambda_{\zeta_n}$ for $n\geq 1$ . By induction on n, we prove that (2.11) holds, and finally $\mathbb P(\Lambda_t\leq \bar \Lambda_t,\, t\geq 0) = 1$ . The proof of Theorem 2.1 is complete.

Proof of Theorem 2.2. For each $i\in\mathcal S$ , denote by $\big(X_t^{(i)}\big)$ the solution to the SDE

\begin{equation*}\mathrm{d} X_t^{(i)}=b\big(X_t^{(i)}, i\big)\,\mathrm{d}t+\sigma\big(X_t^{(i)},i\big)\,\mathrm{d}B_t, \qquad X_0^{(i)}=x,\end{equation*}

and by $\big(P_t^{(i)}\big)$ its associated semigroup. According to Itô’s formula and Gronwall’s inequality, it follows from (2.3) that $P_t^{(i)}\rho (x)=\mathbb E\rho \big(X_t^{(i)}\big)\leq \mathrm{e}^{ \beta_i t} \rho (x)$ . Let $\zeta_n$ , $\mathcal{N}_{\textbf{p}}(\mathrm{d} t,\mathrm{d} z)$ , and $\big(\bar \Lambda_t\big)$ be defined as at the beginning of this section. Let $\mathbb E^{\mathcal{N}_{\textbf{p}}}[{\cdot}]=\mathbb E[\,\cdot\mid\mathscr{F}^{\mathcal{N}_{\textbf{p}}}]$ be the conditional expectation with respect to the $\sigma$ -algebra $\mathscr{F}^{\mathcal{N}_{\textbf{p}}}=\sigma\{\textbf{p}(s);\, s\geq 0\}$ . The mutual independence of $\mathcal{N}_{\textbf{p}}$ and $(B_t)$ yields

\begin{equation*} \mathbb E^{\mathcal{N}_{\textbf{p}}}\big[\rho\big(X_{\zeta_n}\big)\big] \leq \mathbb E^{\mathcal{N}_{\textbf{p}}} \big[\rho\big(X_{\zeta_{n-1}}\big)\big] + \mathbb E^{\mathcal{N}_{\textbf{p}}} \bigg[\int_{\zeta_{n-1}}^{\zeta_n}\beta_{\Lambda_{\zeta_{n-1}}}\rho(X_s)\,\mathrm{d}s\bigg]. \end{equation*}

By Theorem 2.1, $\beta_{\Lambda_s}\leq \beta_{\bar \Lambda_s}$ a.s. Furthermore, since $(\bar\Lambda_s)$ depends only on $\mathcal{N}_{\textbf{p}}$ , we have

\begin{equation*} \mathbb E^{\mathcal{N}_{\textbf{p}}}\big[\rho\big(X_{\zeta_n}\big)\big] \leq \mathbb E^{\mathcal{N}_{\textbf{p}}}\big[\rho\big(X_{\zeta_{n-1}}\big)\big] + \beta_{\bar\Lambda_{\zeta_{n-1}}} \mathbb E^{\mathcal{N}_{\textbf{p}}} \bigg[\int_{\zeta_{n-1}}^{\zeta_n} \rho(X_s)\,\mathrm{d} s\bigg]. \end{equation*}

Then, as $\bar \Lambda_s\equiv \bar \Lambda_{\zeta_{n-1}}$ for $s\in [\zeta_{n-1},\zeta_n)$ by (2.8),

\begin{equation*} \mathbb E^{\mathcal{N}_{\textbf{p}}} \big[\rho\big(X_{\zeta_n}\big)\big] \leq \exp\bigg\{\int_{\zeta_{n-1}}^{\zeta_n} \beta_{\bar \Lambda_s}\,\mathrm{d}s\bigg\} \mathbb E^{\mathcal{N}_{\textbf{p}}}\big[\rho\big(X_{\zeta_{n-1}}\big)\big]. \end{equation*}

Setting $m_t\,:\!=\,\sup\{n\in\mathbb N;\, \zeta_n\leq t\}$ , deducing recursively, we obtain

\begin{align*} \mathbb E^{\mathcal{N}_{\textbf{p}}} [\rho(X_t)] & \leq \exp\bigg\{\int_{\zeta_{m_t}}^t \beta_{\bar \Lambda_s}\,\mathrm{d} s\bigg\} \mathbb E^{\mathcal{N}_{\textbf{p}}} \big[\rho\big(X_{\zeta_{m_t}}\big)\big] \\ & \leq \exp\bigg\{\int_{\zeta_{m_t}}^t\beta_{\bar \Lambda_s}\,\mathrm{d} s\bigg\} \exp\bigg\{\int_{\zeta_{m_t-1}}^{\zeta_{m_t}}\beta_{\bar \Lambda_s}\,\mathrm{d} s\bigg\} \mathbb E^{\mathcal{N}_{\textbf{p}}} \big[\rho\big(X_{\zeta_{m_t-1}}\big)\big] \\ & \leq \cdots \leq \exp\bigg\{\int_0^t\beta_{\bar \Lambda_s}\,\mathrm{d} s\bigg\}\rho(x). \end{align*}

Consequently, $\mathbb E[\rho(X_t)]\leq \mathbb E\big[\exp\big\{\int_0^t\beta_{\bar \Lambda_s}\,\mathrm{d}s\big\}\big]\rho(x)$ , and further, by Hölder’s inequality, for $p'\in (0,1]$ ,

(2.14) \begin{equation} \mathbb E[\rho^{p'}(X_t)] \leq \mathbb E\bigg[\exp\bigg\{\int_0^tp'\beta_{\bar \Lambda_s}\,\mathrm{d}s\bigg\}\bigg]\rho^{p'}(x). \end{equation}

According to [Reference Bardet, Guerin and Malrieu1, Propositions 4.1, 4.2], (2.4) yields that there exist $p'\in (0,1]$ , $C,\eta >0$ such that $\mathbb E\big[\exp\big\{\int_0^tp'\beta_{\bar \Lambda_s}\,\mathrm{d}s\big\}\big]\leq C\mathrm{e}^{-\eta t}$ . Combining this with (2.3) and (2.14), the desired conclusion follows immediately.

3. Perturbation of continuous-time Markov chain

Given two transition rate matrices $Q=(q_{ij})_{i,j\in\mathcal S}$ and $\widetilde Q=(\tilde q_{ij})_{i,j\in\mathcal S}$ on $\mathcal S=\{1,2,\ldots,N\}$ , $2\leq N\leq \infty$ , there are two continuous-time Markov chains $(\Lambda_t)$ and $\big(\tilde \Lambda_t\big)$ associated with Q and $\widetilde Q$ respectively with $\Lambda_0=\tilde \Lambda_0$ ; the purpose of this section is to estimate the quantity

(3.1) \begin{equation} \frac 1t\int_0^t\mathbb P\big(\Lambda_s\neq \tilde \Lambda_s\big)\,\mathrm{d} s,\qquad t>0,\end{equation}

in terms of the difference between Q and $\widetilde Q$ . The quantity in (3.1) plays an important role in the study of regime-switching processes. For instance, in [Reference Shao and Yuan23], it is the key point to show the stability of the process $(X_t)$ under the perturbation of Q. In [Reference Shao20], it is the basis for proving the Euler–Maruyama approximation of state-dependent regime-switching processes. Also, as mentioned in the introduction, it was used in [Reference Shao and Zhao24] to study the smooth dependence of initial values for state-dependent RSPs. In this section, we improve the estimate of the quantity in (3.1), and apply it to develop the perturbation theory associated with regime-switching processes.

In the classical perturbation theory of Markov chains, there has been a lot of research on an upper estimate of the total variation distance $\big\|P_t-\widetilde P_t\big\|_{\mathrm{var}} $ between the semigroups $P_t$ and $\widetilde P_t$ associated with $(\Lambda_t)$ and $\big(\tilde \Lambda_t\big)$ respectively; see, e.g., [Reference Daleckii and Krein5, Reference Mitrophanov14Reference Mitrophanov16] and references therein. For instance, [Reference Mitrophanov14, Reference Mitrophanov15] showed that

(3.2) \begin{equation} \big\|P_t-\widetilde P_t\big\|_{\mathrm{var}}\leq \frac{\mathrm{e}\tau_1}{\mathrm{e}-1}\big\|Q-\widetilde Q\big\|_{\ell_1},\end{equation}

where $\beta(t)=\frac 12 \max_{i,j\in\mathcal S}\|(e_i-e_j)\exp(tQ)\|_{\ell_1}$ , ${\tau_1}=\inf\{t>0;\, \beta(t)\leq \mathrm{e}^{-1}\}$ . Recall that the $\ell_1$ -norm of a matrix $A=(a_{ij})_{i,j\in\mathcal S}$ is defined by $\|A\|_{\ell_1}=\sup_{i\in\mathcal S}\sum_{j\in\mathcal S}|a_{ij}|$ , and the total variation distance between any two probability measures $\mu$ and $\nu$ on $\mathcal S$ is defined by $\|\mu-\nu\|_{\mathrm{var}}=\sup_{|h|\leq 1}\big|\sum_{i\in\mathcal S} h_i(\mu_i-\nu_i)\big|$ . However, the estimate in (3.2) and the method of establishing it is not applicable to (3.1). Moreover, notice that $\big\|P_t-\widetilde P_t\big\|_{\mathrm{var}}=2\inf\mathbb P\big(\xi\neq \tilde \xi\big)\leq 2\mathbb P(\Lambda_t\neq \tilde \Lambda_t)$ , where the infimum is over all couplings $(\xi, \tilde \xi)$ with marginal distributions $P_t$ and $\widetilde P_t$ respectively. The method in [Reference Daleckii and Krein5, Reference Mitrophanov14, Reference Mitrophanov15] cannot be extended to deal with (3.1) because the total variation norm plays an essential role in establishing (3.2). In [Reference Shao and Yuan23], we provided an estimate of (3.1) through constructing a coupling process $(\Lambda_t,\tilde \Lambda_t)$ using Skorokhod’s representation, where the intervals were constructed as in [Reference Ghosh, Arapostathis and Marcus8]. Consequently, [Reference Shao and Yuan23] can only cope with jumping processes in a finite state space and the estimate obtained is not satisfactory, especially for large t.

In this section we use the following assumptions:

  1. (H1) $K_0\,:\!=\,\sup\{q_i,\tilde q_j;\, i,j\in\mathcal S\}<\infty$ .

  2. (H2) There exists a $c_0\in\mathbb N$ such that $q_{ij}=\tilde q_{ij}=0$ for all $i,j\in\mathcal S$ with $|j-i|>c_0$ .

Theorem 3.1. Assume that (H1) and (H2) hold. Then there exist processes $(\Lambda_t)$ and $\big(\tilde \Lambda_t\big)$ such that, for all $t>0$ ,

(3.3) \begin{equation} \frac{1}{t}\int_0^t\!\mathbb P\big(\Lambda_s\neq \tilde \Lambda_s\big)\,\mathrm{d}s \leq 1 - \frac{1}{t\big\|Q-\widetilde Q\big\|_{\ell_1}}\bigg(1-\mathrm{e}^{-\big\|Q-\widetilde Q\big\|_{\ell_1}t}\bigg), \end{equation}

which implies that

(3.4) \begin{equation} \frac 1 t\int_0^t\!\mathbb P\big(\Lambda_s\neq \tilde \Lambda_s\big)\,\mathrm{d}s \leq \min\bigg\{\frac 12\big\|Q-\widetilde Q\big\|_{\ell_1} t, 1\bigg\}. \end{equation}

Also, for all $t>0$ ,

\begin{equation*} \frac{1}{t}\int_0^t\mathbb P\big(\Lambda_s \neq \tilde \Lambda_s\big)\,\mathrm{d}s \geq \frac{\inf\limits_{i\in\mathcal S}\sum\limits_{j\neq i}|q_{ij}-\tilde q_{ij}|}{M+\big\|Q-\widetilde Q\big\|_{\ell_1}} \left(1 - \frac{1}{\Big(M+\big\|Q-\widetilde Q\big\|_{\ell_1}\Big)t}\bigg(1-\mathrm{e}^{-\Big(M+\big\|Q-\widetilde Q\big\|_{\ell_1}\Big)t}\bigg)\right), \end{equation*}

where $M=4c_0K_0$ .

Remark 3.1. In [Reference Shao and Yuan23, Lemma 2.2], given two transition rate matrices Q and $\widetilde Q$ on a finite state space $\mathcal S=\{1,2,\ldots,N\}$ , a coupling process $(\Lambda_t,\tilde \Lambda_t)$ was constructed that satisfies

(3.5) \begin{equation} \frac 1t\int_0^t \mathbb P\big(\Lambda_s\neq \tilde \Lambda_s\big)\,\mathrm{d}s \leq N^2 t\big\|Q-\widetilde Q\big\|_{\ell_1}. \end{equation}

There is an important drawback in (3.5): the appearance of $N^2$ on the right-hand side, which restricts the application of this result to Markov chains on an infinite state space. This drawback has been removed in Theorem 3.1, and, further, a lower estimate of $\frac 1t\int_0^t\mathbb P\big(\Lambda_s\neq\tilde\Lambda_s\big)\,\mathrm{d}s$ is provided in the current work.

3.1. Construction of the coupling process

In this part, we introduce the coupling process $(\Lambda_t,\tilde \Lambda_t)$ on $\mathcal S\times \mathcal S$ that will be used in the proof of Theorem 3.1. Similarly to Section 2, it is also constructed using the Skorokhod representation theorem. However, there are several subtle differences to fit the current purpose.

Step 1: Construction of intervals Due to (H1) and (H2), we let

\begin{equation*} \Gamma_{1k}=[(k-2)K_0,(k-2)K_0+q_{1k}),\quad \widetilde \Gamma_{1k}=[(k-2)K_0,(k-2)K_0+\tilde q_{1k})\end{equation*}

for $2\leq k\leq c_0+1$ , and $U_1=[0,c_0K_0)$ . By (H1), $q_{1k}\leq K_0$ and $\tilde q_{1k}\leq K_0$ , and hence $\Gamma_{1k}\bigcap \Gamma_{1j}=\emptyset$ and $\widetilde \Gamma_{1k}\bigcap \widetilde \Gamma_{1j}=\emptyset$ , $k\neq j$ . Moreover, $\Gamma_{1k}\subset U_1$ and $\widetilde \Gamma_{1k}\subset U_1$ for all $2\leq k\leq c_0+1$ . For $n\geq 2$ , define

\begin{equation*} \Gamma_{nk} = \begin{cases} \big[2(n-1)c_0K_0-(n-k)K_0, 2(n-1)c_0K_0-(n-k)K_0+q_{nk}\big), & \!\!\text{$n-c_0\leq k<n$,} \\[5pt] \big[2(n-1)c_0K_0+(k-n-1)K_0, 2(n-1)c_0K_0+(k-n-1)K_0+q_{nk}\big), & \!\!\text{$n+c_0\geq k>n$}. \end{cases}\end{equation*}

Define, similarly, $\widetilde \Gamma_{nk}$ by replacing $q_{nk}$ above with $\tilde q_{nk}$ . Let $U_n=\big[(2n-3)c_0 K_0, (2n-1)c_0 K_0\big)$ , $n\geq 2$ . So $\Gamma_{nk}\subset U_n$ and $\widetilde \Gamma_{nk}\subset U_n$ for all $k,n\in\mathcal S$ with $|k-n|\leq c_0$ .

Compared with the intervals constructed in [Reference Ghosh, Arapostathis and Marcus8], the starting point of each interval $\Gamma_{nk}$ constructed above does not depend on any other intervals $\Gamma_{ij}$ , $i,j\in\mathcal S$ with $i\neq n$ , $j\neq k$ . We construct $\Gamma_{nk}$ in this way in order to remove the term $N^2$ that appears in (3.5).

Step 2: Construction of Poisson random measure Denote by $\textbf{m}(\mathrm{d} x)$ the Lebesgue measure over the real line $\mathbb R$ . Let $\xi_i^{(k)}$ , $k,i=1,2,\ldots$ , be $U_k$ -valued random variables with $\mathbb P\big(\xi_i^{(k)}\in \mathrm{d} x\big)={\textbf{m}(\mathrm{d} x)}/{\textbf{m}(U_k)}$ , and $\tau_i^{(k)}$ , $k,i=1,2,\ldots$ , be non-negative random variables such that $\mathbb P\big(\tau_i^{(k)}>t\big)=\exp[{-}t\textbf{m}(U_k)]$ , $t\geq 0$ . Assume all $\xi_i^{(k)}$ , $\tau_i^{(k)}$ to be mutually independent. Write $\zeta_n^{(k)}=\tau_1^{(k)}+\cdots+\tau_n^{(k)}$ for $k,n\ge 1$ and $\zeta_0^{(k)}=0$ for $k\ge 1$ . We define $\mathcal D_{\tilde {\textbf{p}}}=\bigcup_{k\geq 1}\bigcup_{n\geq 0}\big\{\zeta_n^{(k)} \big\}$ and $\tilde {\textbf{p}}(t)=\sum_{0\leq s<t} \Delta\tilde{\textbf{p}}(s)$ , $\Delta \tilde{\textbf{p}}(s)=0$ for $s\not\in \mathcal D_{\tilde{\textbf{p}}}$ , and $\Delta\tilde{\textbf{p}}\big(\zeta_n^{(k)}\big)=\xi_n^{(k)}$ , $k,n=1,2,\ldots$ Let

\begin{equation*} \mathcal{N}_{\tilde {\textbf{p}}}([0,t]\times A) = \#\big\{s\in \mathcal D_{\tilde{\textbf{p}}}; \, 0< s\leq t, \tilde {\textbf{p}}(s)\in A\big\}, \qquad t>0,\, A\in \mathscr{B}([0,\infty)).\end{equation*}

As a consequence, we get a Poisson random process $(\tilde{\textbf{p}}(t))$ and its associated Poisson random measure $\mathcal{N}_{\tilde {\textbf{p}}}(\mathrm{d} t,\mathrm{d} x)$ with intensity measure $\mathrm{d} t\,\textbf{m}(\mathrm{d} x)$ .

The construction of $({\tilde {\textbf{p}}}(t))$ is more complicated than that of $(\textbf{p}(t))$ in Section 2, which is caused by the fact that the union of $\Gamma_{nk}$ for $n,k=1,2,\ldots$ may be unbounded.

Step 3: Construction of coupling processes Define two functions $\vartheta$ , $\tilde \vartheta$ associated with $\Gamma_{ij}$ and $\widetilde \Gamma_{ij}$ , $i,j\in \mathcal S$ , by

(3.6) \begin{equation} \vartheta(i,z) = \sum_{j\in\mathcal S, j\neq i}(j-i)\textbf{1}_{\Gamma_{ij}}(z), \qquad \tilde \vartheta(i,z)=\sum_{j\in\mathcal S, j\neq i}(j-i)\textbf{1}_{\widetilde \Gamma_{ij}}(z).\end{equation}

Then, the desired coupling process $(\Lambda_t,\tilde \Lambda_t)$ is given as the solution of the following SDEs:

(3.7) \begin{align} \mathrm{d}\Lambda_t = \int_{[0,\infty)}\vartheta(\Lambda_{t-},z)\, \mathcal{N}_{\tilde{\textbf{p}}}(\mathrm{d}t,\mathrm{d} z), \qquad \Lambda_0=i_0\in\mathcal S, \end{align}
(3.8) \begin{align} \mathrm{d}\tilde\Lambda_t = \int_{[0,\infty)}\tilde\vartheta(\tilde\Lambda_{t-},z)\, \mathcal{N}_{\tilde{\textbf{p}}}(\mathrm{d}t,\mathrm{d}z), \qquad \tilde\Lambda_0=i_0\in\mathcal S. \end{align}

Remark 3.2. The coupling process $(\Lambda_t,\tilde \Lambda_t)$ constructed above is different from the basic coupling of $(\Lambda_t)$ and $\big(\tilde \Lambda_t\big)$ (see [Reference Chen3, p. 11]). Indeed, the transition rate matrix $\bar Q=(\bar{q}_{(ij)(k\ell)})_{i,j,k,\ell\in\mathcal S}$ of $(\Lambda_t,\tilde \Lambda_t)$ is given as follows: for $i,j,k, r\in\mathcal S$ , which are different from each other, $\bar{q}_{(ij)(kr)}=0$ , $\bar{q}_{(ij)(ik)}=\tilde q_{jk}$ , $\bar{q}_{(ij)(kj)}=q_{ik}$ , $\bar{q}_{(ii)(jj)}=q_{ij}\wedge\tilde q_{ij}$ , $\bar{q}_{(ii)(ji)}=(q_{ij}-\tilde q_{ij})\vee 0$ , $\bar{q}_{(ii)(ij)}=(\tilde q_{ij}-q_{ij})\vee 0$ , and $\bar{q}_{(ii)(ii)}=-\sum\limits_{(\ell,\ell')\neq (i,i)}\bar{q}_{(ii)(\ell\ell')}$ .

The transition rate matrix of the basic coupling is given by $q_{(ij)(kj)}=(q_{ik}-\tilde q_{jk})\vee 0$ , $q_{(ij)(ik)} =(\tilde q_{jk}-q_{ik})\vee 0$ , and $q_{(ij)(kk)}=q_{ik}\wedge \tilde q_{jk}$ , for all $i,j,k\in\mathcal S$ , and i,j not necessarily different.

By the previous construction of $\Gamma_{ij}$ , $\widetilde \Gamma_{ij}$ , and $\mathcal{N}_p(\mathrm{d} t,\mathrm{d} x)$ , the following properties hold:

  1. (i) The processes $(\Lambda_t)$ and $\big(\tilde \Lambda_t\big)$ can jump only when the Poisson process $(\tilde{\textbf{p}}(t))$ jumps.

  2. (ii) If $\Lambda_t=\tilde \Lambda_t=k$ , for $\delta>0$ , $\Lambda_{t+\delta}\neq \tilde \Lambda_{t+\delta}$ may happen only when $\zeta_n^{(k)}\in [t,t+\delta)$ and $\xi_n^{(k)}\in \Gamma_{kj}\Delta\widetilde \Gamma_{kj}$ for some $n\geq 1$ , where $A\Delta B\,:\!=\,(A\backslash B)\cup(B\backslash A)$ for Borel sets A, B.

3.2. Proof of Theorem 3.1 and its application

Proof of Theorem 3.1. To get the upper estimate, for $\delta>0$ , let

\begin{equation*} \alpha(\delta) = \sup_{i\in \mathcal S}\mathbb P(\Lambda_\delta\neq\tilde\Lambda_\delta \mid \Lambda_0=\tilde \Lambda_0=i), \qquad \beta(\delta) = 1-\alpha(\delta). \end{equation*}

Now we use the representations in (3.7) and (3.8) of $(\Lambda_t)$ and $\big(\tilde \Lambda_t\big)$ to estimate $\alpha(\delta)$ . Noting that $\Lambda_0=\tilde\Lambda_0=i_0$ for some $i_0\in\mathcal S$ , by (3.6), (3.7), and (3.8) we have

(3.9) \begin{align} \mathbb P\big(\Lambda_\delta\neq \tilde \Lambda_\delta\big) & = \mathbb P\big(\Lambda_\delta\neq\tilde\Lambda_{\delta}\mid\Lambda_0=\tilde\Lambda_0) = \mathbb P\big(\Lambda_\delta\neq\tilde\Lambda_\delta, \mathcal{N}_{\tilde{\textbf{p}}}([0,\delta]\times U_{i_0})\geq 1\big) \nonumber \\ & = \mathbb P\big(\Lambda_\delta\neq\tilde\Lambda_\delta,\mathcal{N}_{\tilde{\textbf{p}}}\big([0,\delta]\times U_{i_0}\big)=1\big) + \mathbb P\big(\Lambda_\delta\neq\tilde\Lambda_\delta,\mathcal{N}_{\tilde{\textbf{p}}}([0,\delta]\times U_{i_0})\geq 2\big). \end{align}

Since $H\,:\!=\,\textbf{m}(U_{i_0})=2c_{0}K_0<\infty$ , there exists a $C>0$ independent of the choice of $i_0\in\mathcal S$ such that

\begin{equation*}\mathbb P\big(\mathcal{N}_{\tilde{\textbf{p}}}([0,\delta]\times U_{i_0})\geq 2\big) = 1 - \mathrm{e}^{-H\delta}-H\delta\mathrm{e}^{-H\delta}\leq C\delta^2.\end{equation*}

Moreover,

(3.10) \begin{align} \mathbb P\big(\Lambda_\delta\neq\tilde\Lambda_\delta, \mathcal{N}_{\tilde{\textbf{p}}}\big([0,\delta]\times U_{i_0}\big)=1\big) & = \int_0^\delta\mathbb P\Big(\Lambda_{\delta}\neq\tilde\Lambda_\delta, \tau_1^{(i_0)}\in\mathrm{d}s,\tau_2^{(i_0)}>\delta-s\Big) \nonumber \\ & = \int_0^\delta\mathbb P\Big(\xi_1^{(i_0)}\in\cup_{j\in \mathcal S}\big(\Gamma_{i_0j}\Delta\widetilde\Gamma_{i_0j}\big), \tau_1^{(i_0)}\in\mathrm{d}s,\tau_2^{(i_0)}>\delta-s\Big) \nonumber \\ & = \delta\mathrm{e}^{-H\delta}\sum_{j\in\mathcal S,j\neq i_0}|q_{i_0j}-\tilde q_{i_0j}| \nonumber \\ & \leq \delta\mathrm{e}^{-H\delta}\big\|Q-\widetilde Q\big\|_{\ell_1}\leq \delta \big\|Q-\widetilde Q\big\|_{\ell_1}. \end{align}

In the light of (3.9) and (3.10), we get

(3.11) \begin{equation} \mathbb P\big(\Lambda_\delta\neq \tilde \Lambda_\delta\big) = \mathbb P(\Lambda_\delta\neq \tilde \Lambda_\delta\mid\Lambda_0=\tilde \Lambda_0=i_0) \leq \delta\big\|Q-\widetilde Q\big\|_{\ell_1}+C\delta^2, \end{equation}

and hence

(3.12) \begin{equation} \alpha(\delta)\leq \delta\big\|Q-\widetilde Q\big\|_{\ell_1}+C\delta^2,\qquad \beta(\delta)=1-\alpha(\delta) \geq 1-\delta\big\|Q-\widetilde Q\big\|_{\ell_1}-C\delta^2. \end{equation}

Next, let us consider the time $2\delta$ .

\begin{align*} \mathbb P\big(\Lambda_{2\delta}\neq \tilde \Lambda_{2\delta}\big) & = \mathbb P\big(\Lambda_{2\delta}\neq \tilde\Lambda_{2\delta},\Lambda_\delta= \tilde \Lambda_{\delta}\big) + \mathbb P\big(\Lambda_{2\delta}\neq \tilde\Lambda_{2\delta},\Lambda_\delta\neq \tilde \Lambda_\delta\big) \\ & = \mathbb P\big(\Lambda_{2\delta}\neq \tilde \Lambda_{2\delta}\mid\Lambda_\delta=\tilde \Lambda_\delta\big) \mathbb P\big(\Lambda_\delta=\tilde \Lambda_\delta\big) + \mathbb P\big(\Lambda_{2\delta}\neq \tilde \Lambda_{2\delta}\mid\Lambda_\delta\neq \tilde \Lambda_{\delta}\big) \mathbb P\big(\Lambda_\delta\neq \tilde \Lambda_{\delta}\big) \\ & \leq \alpha(\delta)\mathbb P\big(\Lambda_\delta=\tilde \Lambda_\delta\big) + \mathbb P\big(\Lambda_\delta\neq \tilde \Lambda_\delta\big) \\ & = \alpha(\delta) + (1-\alpha(\delta))\mathbb P\big(\Lambda_\delta\neq \tilde \Lambda_\delta\big) \\ & \leq \alpha(\delta)(1+\beta(\delta)), \end{align*}

where we have used the time homogeneity of Markov chain $(\Lambda_t,\tilde \Lambda_t)$ to get the estimate $\mathbb P\big(\Lambda_{2\delta}\neq\tilde\Lambda_{2\delta}\mid\Lambda_{\delta}=\tilde\Lambda_{\delta}\big) \leq \alpha(\delta)$ . Analogously, using the time homogeneity of $(\Lambda_t)$ and $\big(\tilde \Lambda_t\big)$ ,

\begin{align*} \mathbb P\big(\Lambda_{3\delta}\neq \tilde \Lambda_{3\delta}\big) & \leq \mathbb P\big(\Lambda_{3\delta}\neq \tilde\Lambda_{3\delta}\mid\Lambda_{2\delta}=\tilde \Lambda_{2\delta}\big) \mathbb P\big(\Lambda_{2\delta}= \tilde \Lambda_{2\delta}\big) + \mathbb P\big(\Lambda_{2\delta}\neq \tilde \Lambda_{2\delta}\big) \\ & \leq \alpha(\delta) + \beta(\delta) \mathbb P\big(\Lambda_{2\delta} \neq \tilde\Lambda_{2\delta}\big) \\ & \leq \alpha(\delta)\big(1+\beta(\delta)+\beta(\delta)^2\big) = 1 - \beta(\delta)^3. \end{align*}

Deducing inductively, we get

\begin{equation*} \mathbb P\big(\Lambda_{k\delta}\neq \tilde \Lambda_{k\delta}\big)\leq \alpha(\delta)\sum_{m=1}^k\beta(\delta)^{m-1} = 1 - \beta(\delta)^{k} \qquad \text{for}\ k\geq 4. \end{equation*}

Therefore, for $t>0$ , setting $K(t)=[{t}/{\delta}]$ , $t_k=k\delta$ for $k\leq K$ , and $t_{K+1}=t$ , by (3.12),

\begin{align*} \int_0^t\mathbb P\big(\Lambda_s\neq \tilde \Lambda_s\big)\mathrm{d} s & \leq \sum_{k=0}^{K(t)}\int_{t_k}^{t_{k+1}} \big(\mathbb P\big(\Lambda_s\neq\tilde\Lambda_s,\Lambda_{k\delta}=\tilde\Lambda_{k\delta}\big) + \mathbb P\big(\Lambda_s\neq\tilde\Lambda_s,\Lambda_{k\delta}\neq\tilde\Lambda_{k\delta}\big)\big)\,\mathrm{d}s \\ & \leq \sum_{k=0}^{K(t)}\int_{t_k}^{t_{k+1}} \mathbb P\big(\Lambda_s\neq\tilde\Lambda_s\mid\Lambda_{k\delta}\neq\tilde\Lambda_{k\delta}\big)\,\mathrm{d}s + \sum_{k=0}^{K(t)}\int_{t_k}^{t_{k+1}}\mathbb P \big(\Lambda_{k\delta}\neq\tilde\Lambda_{k\delta}\big)\,\mathrm{d}s \\ & \leq \alpha(\delta)t + \delta\Bigg(K(t)+1 - \sum_{k=0}^{K(t)} \beta(\delta)^k\Bigg) \\ & \leq \alpha(\delta)t+\delta(K(t)+1)-\delta\sum_{k=0}^{K(t)}\big(1-\delta\big\|Q-\widetilde Q\big\|_{\ell_1}-C\delta^2\big)^k \\ & \leq \alpha(\delta)t + \delta(K(t)+1) - \frac{1-\big(1-\delta\big\|Q-\widetilde Q\big\|_{\ell_1}-C\delta^2\big)^{K(t)+1}}{\big\|Q-\widetilde Q\big\|_{\ell_1}+C\delta}. \end{align*}

Letting $\delta\downarrow 0$ and then dividing both sides by t, we get the upper estimate

\begin{equation*}\frac{1}{t}\int_0^t\!\mathbb P\big(\Lambda_s\neq \tilde \Lambda_s\big)\,\mathrm{d}s \leq 1-\frac{1}{t\big\|Q-\widetilde Q\big\|_{\ell_1}}\Big(1-\mathrm{e}^{-\big\|Q-\widetilde Q\big\|_{\ell_1}t}\Big)\leq 1.\end{equation*}

Using the inequality $\mathrm{e}^{-x}\leq 1-x+\frac 12 x^2$ for $x\geq 0$ , we further get

\begin{equation*}\frac{1}{t}\int_0^t\!\mathbb P\big(\Lambda_s\neq \tilde \Lambda_s\big)\,\mathrm{d}s \leq \min\bigg\{\frac 12 \big\|Q-\widetilde Q\big\|_{\ell_1} t, 1\bigg\}.\end{equation*}

Therefore, the upper estimates (3.3) and (3.4) have been proved.

For the lower estimate, We will estimate the difference by induction. Due to (3.9),

\begin{align*} \mathbb P\big(\Lambda_\delta\neq \tilde \Lambda_\delta\big) & = \mathbb P\big(\Lambda_\delta\neq \tilde \Lambda_\delta\mid\Lambda_0=\tilde \Lambda_0\big) \\ & \geq \mathbb P\big(\Lambda_{\delta}\neq \tilde \Lambda_{\delta}, N_{\tilde{\textbf{p}}}\big([0,\delta]\times U_{i_0}\big)=1\big) \\ & = \delta\mathrm{e}^{-H\delta}\sum_{j\neq i}|q_{i_0j}-\tilde q_{i_0j}| \geq \delta\mathrm{e}^{-H\delta}\inf_{i\in \mathcal S}\sum_{j\neq i}|q_{ij}-\tilde q_{ij}| \,=\!:\,\tilde \alpha(\delta). \end{align*}

Then,

\begin{align*} \mathbb P\big(\Lambda_{2\delta}\neq \tilde \Lambda_{2\delta}\big) & = \mathbb P\big(\Lambda_{2\delta}\neq \tilde \Lambda_{2\delta},\Lambda_{\delta}=\tilde\Lambda_{\delta}\big) + \mathbb P\big(\Lambda_{2\delta}\neq \tilde \Lambda_{2\delta},\Lambda_\delta\neq \tilde \Lambda_{\delta}\big) \\ & = \mathbb P\big(\Lambda_{2\delta}\neq \tilde \Lambda_{2\delta}\mid\Lambda_{\delta}=\tilde \Lambda_{\delta}\big) \big(1-\mathbb P\big(\Lambda_{\delta}\neq \tilde \Lambda_{\delta}\big)\big) \\ & \quad +\mathbb P\big(\Lambda_\delta\neq \tilde \Lambda_{\delta}\big) - \mathbb P\big(\Lambda_{2\delta}=\tilde \Lambda_{2\delta}\mid\Lambda_{\delta}\neq \tilde \Lambda_{\delta}\big) \mathbb P\big(\Lambda_\delta\neq \tilde \Lambda_{\delta}\big) \\ & \geq \mathbb P\big(\Lambda_{2\delta}\neq \Lambda_{2\delta}\mid\Lambda_\delta=\tilde \Lambda_\delta\big) \big(1-\mathbb P\big(\Lambda_{\delta}\neq \tilde \Lambda_{\delta}\big)\big) + \mathbb P\big(\Lambda_\delta\neq \tilde \Lambda_{\delta}\big) \\ & \quad - \mathbb P\Big(\text{there exist jumps for $(\tilde{\textbf{p}}(t))$ during $[\delta,2\delta)$ localizing in $U_{\Lambda_\delta}\cup U_{\tilde \Lambda_\delta}$}\Big) \\& \mathbb P\big(\Lambda_\delta\neq \tilde \Lambda_{\delta}\big) \\ & \geq \mathbb P\big(\Lambda_{2\delta}\neq \Lambda_{2\delta}\mid\Lambda_\delta=\tilde \Lambda_\delta\big) \big(1-\mathbb P\big(\Lambda_{\delta}\neq \tilde \Lambda_{\delta}\big)\big) \\ & \quad + \mathbb P\big(\Lambda_\delta\neq \tilde \Lambda_{\delta}\big) - \big(1-\mathrm{e}^{-M\delta}\big)\mathbb P\big(\Lambda_\delta\neq \tilde \Lambda_\delta\big) \\ & \geq \tilde \alpha(\delta)(1-\alpha(\delta))+\mathrm{e}^{-M\delta}\tilde \alpha(\delta) \\ & \geq \tilde\alpha(\delta)+\big(\mathrm{e}^{-M\delta}-\delta\big\|Q-\widetilde Q\big\|_{\ell_1}-C\delta^2\big) \tilde\alpha(\delta), \end{align*}

where we have used (3.11) and $\mathbb P\big(N_{\tilde{\textbf{p}}}\big([\delta, 2\delta]\times \big(U_{\Lambda_\delta}\cup U_{\tilde \Lambda_{\delta}}\big)\big)\geq 1\big) \leq 1- \mathrm{e}^{-M\delta}$ , since $\textbf{m}(U_{i}\cup U_{j})\leq M=4c_0K_0$ for all $i,j\in\mathcal S$ . Setting $\gamma(\delta)=\mathrm{e}^{-M\delta}-\delta\big\|Q-\widetilde Q\big\|_{\ell_1}-C\delta^2$ , which is positive when $\delta$ is small enough, we rewrite the previous estimate in the form $\mathbb P\big(\Lambda_{2\delta}\neq \tilde \Lambda_{2\delta}\big) \geq \tilde \alpha(\delta)+\gamma(\delta)\tilde \alpha(\delta)$ . Repeating this procedure, we obtain

\begin{equation*} \mathbb P(\Lambda_{k\delta}\neq \tilde \Lambda_{k\delta}) \geq \tilde \alpha(\delta)\sum_{m=1}^{k}\gamma(\delta)^{m-1}, \qquad k\geq 3. \end{equation*}

Then, from this, for $K\in \mathbb N$ ,

\begin{align*} \int_0^{K\delta}\mathbb P\big(\Lambda_s\neq\tilde\Lambda_s\big)\,\mathrm{d}s & = \sum_{k=0}^{K }\int_{k\delta}^{(k+1)\delta} \big(\mathbb P\big(\Lambda_s\neq\tilde\Lambda_s,\Lambda_{k\delta}\neq\tilde\Lambda_{ k\delta}\big) + \mathbb P\big(\Lambda_s\neq\tilde\Lambda_s,\Lambda_{k\delta}=\tilde\Lambda_{k\delta}\big)\big)\,\mathrm{d}s \\ & \geq \sum_{k=0}^{K }\int_{k\delta}^{(k+1)\delta} \big(\mathbb P\big(\Lambda_{k\delta}\neq\tilde\Lambda_{k\delta}\big) - \mathbb P\big(\Lambda_{k\delta}\neq\tilde\Lambda_{k\delta},\Lambda_s=\tilde\Lambda_s\big)\big)\,\mathrm{d}s \\ & \geq \delta\sum_{k=1}^{K}\mathbb P\big(\Lambda_{k\delta}\neq\tilde\Lambda_{k\delta}\big) - \delta\big(1-\mathrm{e}^{-M\delta}\big)\sum_{k=1}^{K}\mathbb P\big(\Lambda_{k\delta}\neq\tilde\Lambda_{k\delta}\big) \\ & \geq \delta\mathrm{e}^{-M\delta}\sum_{k=1}^K\tilde\alpha(\delta)\frac{1-\gamma(\delta)^k}{1-\gamma(\delta)} \\ & = \mathrm{e}^{-M\delta}\frac{\delta\tilde\alpha(\delta)}{1-\gamma(\delta)} \bigg(K-\frac{\gamma(\delta)\big(1-\gamma(\delta)^K\big)}{1-\gamma(\delta)}\bigg). \end{align*}

Since

\begin{equation*}\lim_{\delta\downarrow 0}\frac{\tilde \alpha(\delta)}{1-\gamma(\delta)} = \frac{\inf\limits_{i\in\mathcal S}\sum\limits_{j\neq i}|q_{ij}-\tilde q_{ij}|}{M+\big\|Q-\widetilde Q\big\|_{\ell_1}}, \qquad \lim_{\delta\downarrow 0} \gamma(\delta)^{\frac{t}{\delta}}=\mathrm{e}^{-\big(M+\big\|Q-\widetilde Q\big\|_{\ell_1}\big) t},\end{equation*}

by taking $K=[{t}/{\delta}]$ in the previous estimation and letting $\delta$ tend downward to 0, we finally get

\begin{equation*} \int_0^t\mathbb P\big(\Lambda_s\neq\tilde\Lambda_s\big)\,\mathrm{d}s \geq \frac{\inf\limits_{i\in\mathcal S}\sum\limits_{j\neq i}|q_{ij}-\tilde q_{ij}|}{M+\big\|Q-\widetilde Q\big\|_{\ell_1}} \left(t-\frac{1}{M+\big\|Q-\widetilde Q\big\|_{\ell_1}}\left(1-\mathrm{e}^{-\Big(M+\big\|Q-\widetilde Q\big\|_{\ell_1}\Big)t}\right)\right), \end{equation*}

which is the desired lower estimate. The proof is complete.

Next, we consider the application of Theorem 3.1. First, let us consider its application to perturbation theory on the invariant probability measures of continuous-time Markov chains on infinite state spaces. There have been many works on perturbation theory of Markov chains, such as [Reference Mitrophanov16, Reference Zeifman and Isaacson29] and references therein. We refer readers to the recent review paper [Reference Zeifman, Korolev and Satin30] for more discussions on this topic.

Let $P_t$ and $\widetilde P_t$ denote the semigroups with respect to the transition rate matrices Q and $\widetilde Q$ respectively. Assume that there exist invariant probability measures $\pi=(\pi_i)_{i\in\mathcal S}$ and $\tilde \pi=(\tilde \pi_i)_{i\in\mathcal S}$ associated respectively with $P_t$ and $\widetilde P_t$ , i.e. $\pi P_t=\pi$ , $\tilde \pi \widetilde P_t=\tilde \pi$ .

Corollary 3.1. Assume (H1) and (H2) hold. Suppose that there exists a function $\eta\,:\,[0,\infty)\to[0,2]$ satisfying $\int_0^\infty\eta_s\,\mathrm{d}s<\infty$ such that, for some $i_0\in\mathcal S$ , $\|P_t(i_0,\cdot)-\pi\|_{\mathrm{var}}\leq \eta_t$ and $\|\widetilde P_t(i_0,\cdot)-\tilde \pi\|_{\mathrm{var}}\leq \eta_t$ for $t\geq 0$ . Then,

\begin{equation*} \|\pi-\tilde \pi\|_{\mathrm{var}} \leq 2\sqrt 2\bigg(\int_0^\infty \eta_s\,\mathrm{d}s\bigg)^{1/2}\sqrt{\big\|Q-\widetilde Q\big\|_{\ell_1}}. \end{equation*}

Proof. For any bounded function h on $\mathcal S$ with $|h|_\infty\,:\!=\,\sup_{i\in\mathcal S} |h_i|\leq 1$ ,

\begin{align*} |\pi(h)-\tilde \pi(h)| & = \Bigg|\sum_{i\in\mathcal S} \pi_i h_i-\sum_{i\in\mathcal S}\tilde \pi_i h_i\Bigg| \\ & \leq \bigg|\pi(h)-\frac 1t\int_0^t P_sh(i_0)\,\mathrm{d}s\bigg| + \bigg|\tilde\pi(h)-\frac 1t\int_0^t\widetilde P_s h(i_0)\,\mathrm{d}s\bigg|\\ & + \bigg|\frac 1t\int_0^t P_s h(i_0)-\widetilde P_s h(i_0)\,\mathrm{d}s\bigg| \\ & \leq \frac 1t\int_0^t|P_s h(i_0)-\pi(h)|\,\mathrm{d}s + \frac 1t\int_0^t|\widetilde P_s h(i_0)-\tilde \pi(h)|\,\mathrm{d}s + \big\|Q-\widetilde Q\big\|_{\ell_1} t \\ & \leq \frac 2 t\int_0^\infty\eta_s\,\mathrm{d}s + \big\|Q-\widetilde Q\big\|_{\ell_1} t \qquad \text{for all } t>0, \end{align*}

where we have used (3.4) in Theorem 3.1. By taking $t=\Big(2\int_0^\infty\eta_s\,\mathrm{d}s/\big\|Q-\widetilde Q\big\|_{\ell_1}\Big)^{1/2}$ , we arrive at

\begin{equation*}\|\pi-\tilde \pi\|_{\mathrm{var}} = \sup_{|h|\leq 1}|\pi(h)-\tilde\pi(h)| \leq 2\sqrt 2\bigg(\int_0^\infty\eta_s\,\mathrm{d}s\bigg)^{\frac 12}\sqrt{\big\|Q-\widetilde Q\big\|_{\ell_1}}, \end{equation*}

which is the desired conclusion.

Remark 3.3. When $\mathcal S$ is a finite state space, the stability of $\pi$ in terms of the perturbation of Q has been studied in [Reference Faggionato, Gabrielli and Crivellari6, Reference Freidlin and Wentzell7]. [Reference Freidlin and Wentzell7] proved it through expressing $\pi$ as a polynomial of transition probabilities. This result was applied in [Reference Budhiraja, Dupuis and Ganguly2] to establish the averaging principle for multiple-timescale systems. [Reference Faggionato, Gabrielli and Crivellari6] proved a similar result by the Perron–Frobenius theorem to express $\pi$ in terms of a non-zero right eigenvector of the Q-matrix with eigenvalue 0.

Second, we can apply Theorem 3.1 to improve all the main results [Reference Shao and Yuan23, Theorems 1.1--1.4]. Here we only state the improvement of [Reference Shao and Yuan23, Theorem 1.1] to save space.

Consider the regime-switching system $(X_t,\Lambda_t)$ satisfying

\begin{equation*} \mathrm{d} X_t=b(X_t,\Lambda_t)\,\mathrm{d} t+\sigma(X_t,\Lambda_t)\,\mathrm{d} B_t, \qquad X_0=x_0\in\mathbb R^d,\ \Lambda_0=i_0\in\mathcal S,\end{equation*}

with $(\Lambda_t)$ a Markov chain on $\mathcal S=\{1,2,\ldots,N\}$ , $2\leq N\leq \infty$ . In realistic applications, we can sometimes only get an estimation $\widetilde Q$ of the original transition rate matrix Q of $(\Lambda_t)$ . $\widetilde Q$ determines another Markov chain $\big(\tilde \Lambda_t\big)$ . Correspondingly, the studied system $(X_t)$ turns into $(\widetilde X_t)$ satisfying

\begin{equation*}\mathrm{d} \widetilde X_t=b\big(\widetilde X_t,\tilde \Lambda_t\big)\,\mathrm{d} t + \sigma\big(\widetilde X_t,\tilde \Lambda_t\big)\,\mathrm{d} B_t, \qquad \widetilde X_0=x_0,\ \tilde \Lambda_0=i_0.\end{equation*}

It is necessary to measure the difference between $X_t$ and $\widetilde X_t$ caused by the difference between Q and $\widetilde Q$ . We shall characterize the difference between $X_t$ and $\widetilde X_t$ via the Wasserstein distance between their distributions.

For any two probability measures $\mu$ , $\nu$ on $\mathbb R^d$ , define the $L_2$ -Wasserstein distance between them by

\begin{equation*}W_2(\mu,\nu)^2=\inf_{\pi\in\mathscr{C}(\mu,\nu)}\bigg\{\int_{\mathbb R^d\!\times\!\mathbb R^d} |x-y|^2\,\pi(\mathrm{d} x,\mathrm{d} y)\bigg\},\end{equation*}

where $\mathscr{C}(\mu,\nu)$ denotes the set of all the couplings of $\mu$ , $\nu$ on $\mathbb R^d\times \mathbb R^d$ .

Corollary 3.2. Assume that (Q1), (Q2), (H1), and (H2) hold. Denote by $\mathcal{L}(X_t)$ and $\mathcal{L}(\widetilde X_t)$ the distributions of $X_t$ and $\widetilde X_t$ respectively. Then

\begin{equation*} W_2\big(\mathcal{L}(X_t),\mathcal{L}\big(\widetilde X_t\big)\big)^2 \leq C(p,t)\Big(\big\|Q-\widetilde Q\big\|_{\ell_1}\Big)^{(p-1)/p}, \qquad t>0, \end{equation*}

where $p>1$ and C(p,t) is a positive constant depending only on p and t.

Proof. This result can be proved along the lines of [Reference Shao and Yuan23, Theorem 1.1] by replacing the upper bound of [Reference Shao and Yuan23, Lemma 2.2] with the upper bound given in Theorem 3.1. The constant C(p,t) can be explicitly expressed as in [Reference Shao and Yuan23].

Funding information

This work is supported in part by National Key R&D Program of China (No. 2022YFA1000033) and NNSFs of China (No. 12271397, 11831014).

Competing interests

There were no competing interests to declare which arose during the preparation or publication process of this article.

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