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The impact of pinning points on memorylessness in Lévy random bridges

Published online by Cambridge University Press:  15 October 2024

Mohammed Louriki*
Affiliation:
Cadi Ayyad University
*
*Postal address: Mathematics Department, Faculty of Sciences Semalalia, Cadi Ayyad University, Boulevard Prince Moulay Abdellah, P. O. Box 2390, Marrakesh 40000, Morocco. Email: m.louriki@uca.ac.ma
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Abstract

Random bridges have gained significant attention in recent years due to their potential applications in various areas, particularly in information-based asset pricing models. This paper aims to explore the potential influence of the pinning point’s distribution on the memorylessness and stochastic dynamics of the bridge process. We introduce Lévy bridges with random length and random pinning points, and analyze their Markov property. Our study demonstrates that the Markov property of Lévy bridges depends on the nature of the distribution of their pinning points. The law of any random variables can be decomposed into singular continuous, discrete, and absolutely continuous parts with respect to the Lebesgue measure (Lebesgue’s decomposition theorem). We show that the Markov property holds when the pinning points’ law does not have an absolutely continuous part. Conversely, the Lévy bridge fails to exhibit Markovian behavior when the pinning point has an absolutely continuous part.

Type
Original Article
Copyright
© The Author(s), 2024. Published by Cambridge University Press on behalf of Applied Probability Trust

1. Introduction

Random bridge processes have proven to be a successful framework for modeling the information related to future non-defaultable cash flows and the default time in financial models. In this context, the length of the bridge serves as a representation of the default time, while the pinning point models the cash flows. Studies by various researchers have demonstrated the effectiveness and applicability of bridge processes in financial modeling contexts. For instance, to model the flow of information concerning a cash flow occurring at a maturity date T, represented by a random variable $Z_T$ , [Reference Brody, Hughston and Macrina3] and [Reference Brody, Hughston and Macrina4] used the completed natural filtration generated by the Brownian bridge with length T and pinning point $Z_T$ , while, [Reference Brody, Hughston and Macrina5] used random gamma bridges, gamma bridges with deterministic length and random pinning point, to model accumulated losses of large credit portfolios in credit risk management. Moreover, in [Reference Hoyle, Hughston and Macrina14] the information-based asset-pricing framework thus established was extended to include a wider class of models for market information. To model the information flow, they introduced a class of processes called Lévy random bridges, Lévy bridges with deterministic length and random pinning point, generalizing the Brownian bridge and gamma bridge information processes. In [Reference Hoyle, Hughston and Macrina15] the authors developed a class of non-life-reserving models using stable- $\frac12$ random bridges to simulate the accumulation of paid claims, allowing for an essentially arbitrary choice of a priori distribution for the ultimate loss. For more research in the context of modeling the information through the completed filtration generated by bridges with deterministic length and random pinning point see [Reference Brody and Law6, Reference Erraoui, Hilbert and Louriki11, Reference Rutkowski and Yu18]. However, [Reference Bedini, Buckdahn and Engelbert1], motivated by modeling information concerning credit default times, used Brownian bridges with random length to model the flow of information concerning the default time of a financial company or state. In order to include a wider class of information processes for market filtration, [Reference Erraoui and Louriki8, Reference Erraoui, Hilbert and Louriki9, Reference Erraoui, Hilbert and Louriki10] introduced and studied Gaussian, Gamma, and Lévy bridges with random length. This opens the way for a different application: information-based approaches for credit risk. In [Reference Louriki16], the Brownian bridge concept was extended by considering uncertainty not only for the time level but also for the pinning point. The paper suggested a Brownian bridge approach for the information flow for the switching behavior of gas storage contract holders using a two-point distribution for the pinning point. On a different note, in [Reference Louriki17], the joint modeling of a non-defaultable cash flow and the insolvency time of the writer of the underlying asset was investigated by introducing a suitable random bridge.

The primary focus of this paper is twofold: first, to introduce Lévy bridges with random length and random pinning point, and second, to investigate their Markov property. Note that in [Reference Louriki16], the bridge with random length $\tau$ and pinning point Z associated with a Brownian motion was constructed by replacing the deterministic length r and pinning point z with the corresponding values of the random time $\tau$ and random variable Z. The availability of an explicit representation of the Brownian bridge is crucial for this construction. However, it should be noted that for a general Lévy process, the existence of an explicit representation of the bridge is not guaranteed.

To introduce a Lévy bridge with random length $\tau$ and random pinning point Z we choose the following approach: conditionally on the events $\tau=r$ and $Z=z$ the law of the Lévy bridge with random length $\tau$ and random pinning point Z is none other than that of the Lévy bridge with length r and pinning point z. For this, following the approach given in [Reference Fitzsimmons, Pitman and Yor12] for the construction of Markov bridges with deterministic length r and deterministic pinning point z, we will need to assume the existence of transition probability densities of the Lévy process. Once the construction is completed, our primary objective is to examine the Markov property of the resulting bridge. We show that the pinning point has a crucial impact on the memorylessness and the dynamic of the bridge process. Specifically, from the well-known Lebesgue decomposition theorem, we see that the law $\mathbb{P}_{Z}$ of Z can be decomposed as

\begin{equation*} \mathbb{P}_{Z} = a_{\mathrm{sd}}\mathbb{P}_{Z}^{\mathrm{sd}} + a_{\mathrm{sc}}\mathbb{P}_{Z}^{\mathrm{sc}} + a_{\mathrm{ac}}\mathbb{P}_{Z}^{\mathrm{ac}},\end{equation*}

where $a_{\mathrm{sd}}$ , $a_{\mathrm{sc}}$ , and $a_{\mathrm{ac}}$ are three positive real numbers such that $a_{\mathrm{sd}} + a_{\mathrm{sc}} + a_{\mathrm{ac}} = 1$ , and $\mathbb{P}_{Z}^{\mathrm{sd}}$ is discrete (has a countable support), $\mathbb{P}_{Z}^{\mathrm{sc}}$ is singular continuous (has a distribution function that is continuous but not absolutely continuous, it only increases on a set of Lebesgue measure 0), and $\mathbb{P}_{Z}^{\mathrm{ac}}$ is absolutely continuous (there exists a positive function $f_Z(t)$ such that $\mathbb{P}_{Z}^{\mathrm{ac}}(A) = \int_{A} f_Z(s)\,\mathrm{d}s$ for all $A \in \mathcal{B}(\mathbb{R})$ ). We demonstrate that if $a_{\mathrm{ac}}=0$ , then the Lévy bridge with random length $\tau$ and random pinning point Z is Markovian. However, the presence of the absolutely continuous part in the law of Z destroys the Markov property. Precisely, if $a_{\mathrm{ac}}\neq 0$ , then there exist times $\tau$ such that the Lévy bridge with random length $\tau$ and random pinning point Z does not possess the Markov property.

Let us consider an intuitive explanation of how the breakdown of the Markov property in the bridge process with length $\tau$ and pinning point Z is influenced by the absolute continuity of the pinning point Z. The random time $\tau$ represents a significant event where the process suddenly exhibits a shift in behavior. Precisely, at time $\tau$ , the process transitions to being governed solely by the random variable Z. Consequently, the occurrence of $\tau$ marks a crucial point in the process where the Markov property may be tested. The Markov property states that the future behavior of a stochastic process depends only on its present state, not on the sequence of events that preceded it. Therefore, if the random time $\tau$ can be determined solely based on the present state of the process $\zeta_t$ , then the Markov property may be preserved. However, if the occurrence of $\tau$ depends on additional information beyond the present state $\zeta_t$ , such as the entire history leading up to $\tau$ , then the Markov property may be violated. In this case, the future behavior of the process after $\tau$ becomes dependent on the past history, indicating a breakdown of memorylessness and the Markov property. In the discrete case, where Z has a discrete distribution, determining the occurrence of $\tau$ might be straightforward because the values of Z are distinct and separated, allowing for clear identification of when the process transition Z happens. However, in the case where Z follows an absolutely continuous distribution, the values of Z form a continuum. This smooth variation can make it challenging to identify precisely when the transition occurs based solely on the information available at time $\tau$ . This is confirmed by Proposition 2, in which we show that the event $\{\tau\leq t\}$ is measurable with respect to the completed filtration generated by $\zeta_t$ if and only if the law of the pinning point Z does not possess an absolutely continuous part.

The current paper extends the results of [Reference Louriki16] in two different ways. First, in [Reference Louriki16] the Markov property is investigated for the Brownian case only for discrete or absolutely continuous pinning points: nothing is said about the singular continuous case. Second, the proof in [Reference Louriki16] relies on the fact that the bridge admits an explicit representation in the Brownian case. This also extends [Reference Erraoui, Hilbert and Louriki10] in which the Lévy bridge Markov property is studied in the case when the pinning point is deterministic. Moreover, in this paper, different methods have been used.

In section 2 we introduce Lévy bridges with random length and pinning point, we list some examples, and we investigate the bridge Markov property in the presence of the absolutely continuous part in the pinning point law.

The following notation will be used throughout the paper. For a complete probability space $(\Omega,\mathcal{F},\mathbb{P})$ , $\mathcal{N}_{\mathbb{P}}$ denotes the collection of $\mathbb{P}$ -null sets. If $\theta$ is a random variable or a stochastic process, then $\mathbb{P}_{\theta}$ denotes the law of $\theta$ under $\mathbb{P}$ . If E is a topological space, then the Borel $\sigma$ -algebra over E will be denoted by $\mathcal{B}(E)$ . The characteristic function of a set A is written $\mathbf{1}_{A}$ . The symmetric difference of two sets A and B is denoted by $A\bigtriangleup B$ . We denote by $(\mathbb{D}_{\infty},\mathcal{T}_{\mathbb{D}_{\infty}})$ the Skorohod space equipped with the Skorohod topology, and $\mathcal{D}$ denotes its Borel $\sigma$ -field. Finally, for any process $Y=(Y_t,\, t\geq 0)$ on $(\Omega,\mathcal{F},\mathbb{P})$ , we define by $\mathbb{F}^{Y}=\big(\mathcal{F}^{Y}_t\,:\!=\,\sigma(Y_s, s\leq t),\, t\geq 0\big)$ the natural filtration of the process Y.

2. Lévy bridges with random length and pinning point

Motivated by the desire to generalize Lévy bridges, we introduce the notion of Lévy bridges with random length and random pinning point. These bridges extend the classical concept of Lévy bridges by allowing for uncertainty in both the length of the bridge and the location at which it is pinned. This generalization extends remarkably the possibility of modeling information flows. In this section, our objective is to define Lévy bridges with random length and pinning point and investigate their Markov property. A significant finding is that the Markov property of this class of processes depends on the nature of the law of the pinning point of the bridge process. Before introducing this novel class of processes, we provide a brief review of the definition and properties of Lévy bridges with deterministic length and pinning point.

Lévy processes are characterized by the triple $(b, \sigma, \nu)$ , where b represents the drift component, $\sigma$ describes the covariance structure of the Gaussian part, and $\nu$ denotes the jump intensity or rate at which jumps occur. This triple uniquely determines the behavior and properties of the Lévy process. Let $X=(X_t, t\geq 0)$ be a one-dimensional Lévy process; the law of $X_t$ is specified via its characteristic function given by

\begin{equation*} \mathbb{E}[{\exp}(\mathrm{i}\lambda X_t)]=\exp(t\psi(\lambda)), \quad \lambda \in \mathbb{R}, t\geq 0.\end{equation*}

The function $\psi$ is commonly referred to as the characteristic exponent of the process X. The explicit expression of the characteristic exponent is derived using the well-known Lévy–Khintchine formula:

\begin{equation*} \psi(\lambda) = \mathrm{i}\lambda b - \frac{\lambda^2\sigma}{2} + \int_{\mathbb{R}}({\exp}(\mathrm{i}\lambda x) - 1 - \mathrm{i}\lambda x \mathbf{1}_{\{\vert x\vert<1\}})\, \nu(\mathrm{d}x), \end{equation*}

where $b\in\mathbb{R}$ , $\sigma\in\mathbb{R}_+$ , and $\nu$ is a measure concentrated on $\mathbb{R}\setminus\{0\}$ , called the Lévy measure, satisfying $\int_{\mathbb{R}}(x^2\wedge 1)\,\nu(\mathrm{d}x) < \infty$ . Further details about Lévy processes can be found in [Reference Bertoin2, Reference Sato19]. The Kolmogorov–Daniell theorem allows us to see that the finite-dimensional distributions of X induce a probability measure $\mathbb{P}_X$ on the Skorohod space $\mathbb{D}_{\infty}$ . Furthermore, it is well known in the literature that every Lévy process can be precisely represented as the coordinate process on the Skorohod space $\mathbb{D}_{\infty}$ . This realization allows us to treat each Lévy process as a probability measure on $\mathbb{D}_{\infty}$ and vice versa.

Our main assumption is the following.

Assumption 1. For all $t>0$ , the probability law $\mathbb{P}_{X_{t}}(\mathrm{d}x)$ is absolutely continuous with respect to Lebesgue measure, with a density function $f^X_t$ .

Numerous studies have been dedicated to investigating the conditions that guarantee the absolute continuity of the probability law $\mathbb{P}_{X_{t}}(\mathrm{d}x)$ with respect to Lebesgue measure. For instance, if the Gaussian component $\sigma$ does not vanish, or if the characteristic function of $X_t$ is integrable for every $t>0$ , then the law $\mathbb{P}_{X_{t}}(\mathrm{d}x)$ admits a density function with respect to Lebesgue measure for every $t>0$ [Reference Sato19, Reference Sharpe20]. See also [Reference Hartman and Wintner13, Reference Tucker21] for more conditions that ensure the existence of a density function.

Let $r>0$ and $z\in\mathbb{R}$ such that $0<f_r^X(z)<+\infty$ . Under Assumption 1, it follows from [Reference Fitzsimmons, Pitman and Yor12, Proposition 1] that there exists a unique probability measure $\mathbb{P}^{r,z}$ such that

\begin{equation*} \mathbb{P}^{r,z}\Big\vert_{\mathcal{F}^{X}_{t}}=\dfrac{f^X_{r-t}(z-X_{t})}{f^X_{r}(z)}\,\,\mathbb{P}\Big\vert_{\mathcal{F}^{X}_{t}}\end{equation*}

for all $t<r$ . Moreover, under $\mathbb{P}^{r,z}$ , the process $(X_{t}, 0\leq t<r)$ is a non-homogeneous Markov process with transition densities given by

\begin{equation*} \mathbb{P}^{r,z}\big(X_{t}\in\mathrm{d}y\mid\mathcal{F}^{X}_{s}\big) = \mathbb{P}^{r,z}(X_{t}\in\mathrm{d}y\mid X_{s}) = \frac{f^X_{t-s}(y-X_{s})f^X_{r-t}(z-y)}{f^X_{r-s}(z-X_{s})}\,\mathrm{d}y, \quad s<t<r.\end{equation*}

Furthermore, $(\mathbb{P}^{r,z})_{z\in \mathbb{R}}$ is a regular version of the family of conditional probability distributions $\mathbb{P}(\cdot\mid X_r=z)$ , $z\in\mathbb{R}$ . This implies that $\mathbb{P}^{r,z}$ is the law of the bridge from 0 to z with deterministic length r associated with the Lévy process X. Let $(X^{r,z},t\leq r)$ be the process associated with the probability law $\mathbb{P}^{r,z}$ . The process thus constructed, $X^{r,z}$ , can be realized as the coordinate process on the Skorohod space $\mathbb{D}_{r}$ of càdlàg functions from [0,r] to $\mathbb{R}$ . Furthermore, it satisfies $\mathbb{P}\big(X_{0}^{r,z}=0, X_{r}^{r,z}=z\big)=1$ . Consequently, the finite-dimensional densities of $X^{r,z}$ exist and, given $x_{0}=t_{0}=0$ , for every $n\in\mathbb{N}$ , $0<t_{1}<t_{2}<\cdots<t_{n}<r$ , and $(x_{1},x_{2},\ldots,x_{n})\in\mathbb{R}^{n}$ , we have

\begin{equation*} \mathbb{P}\big(X_{t_{1}}^{r,z}\in\mathrm{d}x_{1},\ldots,X_{t_{n}}^{r,z}\in\mathrm{d}x_{n}\big) = \frac{f^X_{r-t_{n}}(z-x_{n})}{f^X_{r}(z)}\prod_{i=1}^{n}f^X_{t_{i}-t_{i-1}}(x_{i}-x_{i-1})\, \mathrm{d}x_{1}\cdots\mathrm{d}x_{n}. \end{equation*}

Throughout the subsequent analysis, we extend the process $X^{r,z}$ beyond time r by assigning it the constant value z. That is, we identify the process $\big(X_t^{r,z},t\geq 0\big)$ with the process $\tilde{X}^{r,z}\,:\!=\,\big(X_t^{r,z}\mathbf{1}_{\{t<r\}}+z\mathbf{1}_{\{t\geq r\}},\, t\geq 0\big)$ . At this point, we are ready to introduce Lévy bridges with random length and random pinning point associated with the Lévy process X.

Definition 1. Let $\tau$ and Z be two independent random variables taking values in $(0,+\infty)$ and $\mathbb{R}$ , respectively. We say that a process $\zeta$ is the Lévy bridge with random length $\tau$ and pinning point Z derived from the Lévy process X if the following are satisfied:

  1. (i) $0<f^X_r(z)<\infty$ for $\mathbb{P}_{(\tau,Z)}$ -almost every (r,z).

  2. (ii) The conditional distribution of $\zeta$ given $\{\tau=r,Z=z\}$ is the law of the process $X^{r,z}$ .

Remark 1. Following [Reference Erraoui, Hilbert and Louriki10, Definition 3.1], given $Z=z$ , $\zeta$ is none other than the Lévy process pinned in z at the random time $\tau$ , or, equivalently, the Lévy bridge with pinning point z and random length $\tau$ . Indeed, for all $n\in \mathbb{N}$ , $0 < t_1 < t_2 <\cdots < t_n$ , and every bounded measurable function defined on $\mathbb{R}^n$ ,

\begin{align*} \mathbb{E}\big[g\big(\zeta_{t_1},\ldots,\zeta_{t_n}\big)\mid Z=z\big] & = \int_{0}^{+\infty}\mathbb{E}\big[g\big(\zeta_{t_1},\ldots,\zeta_{t_n}\big)\mid Z=z,\tau=r\big]\, \mathbb{P}_{\tau\vert Z=z}(\mathrm{d}r) \\ & = \int_{0}^{+\infty}\mathbb{E}\big[g\big(X^{r,z}_{t_1},\ldots,X^{r,z}_{t_n}\big)\big]\, \mathbb{P}_{\tau}(\mathrm{d}r). \end{align*}

Denoting by $\zeta^{\tau,z}$ the bridge with pinning point z and random length $\tau$ associated with X, we also have

\begin{align*} \mathbb{E}\big[g\big(\zeta_{t_1}^{\tau,z},\ldots,\zeta_{t_n}^{\tau,z}\big)\big] & = \int_{0}^{+\infty}\mathbb{E}\big[g\big(\zeta_{t_1}^{\tau,z},\ldots,\zeta_{t_n}^{\tau,z}\big)\mid \tau=r\big]\,\mathbb{P}_{\tau}(\mathrm{d}r) \\ & = \int_{0}^{+\infty}\mathbb{E}\big[g\big(X^{r,z}_{t_1},\ldots,X^{r,z}_{t_n}\big)\big]\, \mathbb{P}_{\tau}(\mathrm{d}r). \end{align*}

Remark 2. The process $\zeta$ can be realized as follows. Consider the probability space $(\tilde{\Omega},\tilde{\mathcal{F}},\tilde{\mathbb{P}})$ with $\tilde{\Omega} = \mathbb{D}_{\infty} \times (0,+\infty) \times \mathbb{R}$ , $\tilde{\mathcal{F}} = \mathcal{F} \otimes \mathcal{B}((0,+\infty)) \otimes \mathcal{B}(\mathbb{R})$ , and $\tilde{\mathbb{P}}(\mathrm{d}w,\mathrm{d}r,\mathrm{d}z) = \mathbb{P}_{X^{r,z}}(\mathrm{d}w)\mathbb{P}_{(\tau,Z)}(\mathrm{d}r,\mathrm{d}z)$ . We write $\tilde{w}=(w,r,z)$ for a generic point of $\tilde{\Omega}$ . Now define $\tilde{\tau}(\tilde{w})=r$ , $\tilde{Z}(\tilde{w})=z$ , and $\tilde{\zeta}_{t}(\tilde{w})=X_{t}^{r,z}(w)$ , $t\geq0$ . Thus, we have

\begin{alignat*}{2} \tilde{\mathbb{P}}(\tilde{\tau}\leq t) & = \mathbb{P}(\tau \leq t), & & t\geq 0, \\ \tilde{\mathbb{P}}(\tilde{Z}\leq a) & = \mathbb{P}(Z \leq a), \quad & & a\in\mathbb{R}, \end{alignat*}

and the conditional distribution of $\tilde{\zeta}$ given $\{\tilde{\tau}=r,\tilde{Z}=z\}$ is the law $\mathbb{P}_{X^{r,z}}$ . Moreover, the process thus defined has càdlàg paths and satisfies $\tilde{\zeta}_{t}=\tilde{Z}$ when $\tilde{\tau} \leq t$ and $\tilde{\zeta}_{0}=0$ .

2.1. Examples

We provide explicit representations of Lévy bridges with random length and pinning point in the following examples.

Example 1. (Brownian motion.) Let $(r,z)\in(0,+\infty)\times\mathbb{R}$ and B be a Brownian motion. It is obvious that the Brownian bridge with length r and pinning point z can be represented as

\begin{equation*} B_t^{r,z} = B_{t\wedge r} - \frac{t\wedge r}{r}B_{r} + \frac{t\wedge r}{r}z, \quad t\geq 0. \end{equation*}

For any strictly positive random time $\tau$ and any random variable Z such that $\tau$ , Z, and B are independent, the process given by

\begin{equation*} \zeta_t = B_{t\wedge\tau} - \frac{t\wedge\tau}{\tau}B_{\tau} + \frac{t\wedge\tau}{\tau}Z, \quad t\geq 0, \end{equation*}

is the bridge with random length $\tau$ and pinning point Z associated with the Brownian motion B. For a fuller treatment we refer the reader to [Reference Louriki16].

Example 2. (Gamma process.) Let $\gamma$ be a gamma process, and $\tau$ and Z be two random variables taking values in $(0,+\infty)$ independent of $\gamma$ . The process given by

\begin{equation*} \zeta_t = Z\frac{\gamma_{t\wedge\tau}}{\gamma_{\tau}}, \quad t\geq 0, \end{equation*}

is the bridge with random length $\tau$ and pinning point Z. See [Reference Erraoui, Hilbert and Louriki9] for the case in which the pinning point is deterministic.

Example 3. (Symmetric $\alpha$ -stable process.) Let $X^{\alpha}$ be a symmetric $\alpha$ -stable process with $\alpha\in(0,1)\cup(1,2)$ , that is, a Lévy process with Lévy measure given by

\[ \mathrm{d}\nu^{\alpha}(x) = \bigg(\frac{1}{|x|^{1+\alpha}}\mathbf{1}_{\{x<0\}} + \frac{1}{x^{1+\alpha}}\mathbf{1}_{\{x>0\}}\bigg)\,\mathrm{d}x. \]

Its characteristic exponent $\varPsi_{X^{\alpha}}$ has the form $\varPsi_{X^{\alpha}}(u)=-|u|^{\alpha}$ , $u\in\mathbb{R}$ . Hence, it is clear that its characteristic function is integrable. According to [Reference Sharpe20], it is evident that for all $t>0$ the law of $X^{\alpha}_t$ is absolutely continuous with respect to Lebesgue measure. Furthermore, the density function takes the form

\begin{equation*} f^{\alpha}_t(x) = (2\pi)^{-1}\int_{\mathbb{R}}\exp(\mathrm{i}xy)\exp(-t\vert y\vert^{\alpha})\,\mathrm{d}y, \quad x\in \mathbb{R}. \end{equation*}

It is important to note that, for every $x\in \mathbb{R}$ and $t>0$ , $0<f^{\alpha}_t(x)<+\infty$ . Indeed, if there exist certain t and x such that $f^{\alpha}_t(x)=0$ , then there exists a constant c such that $X^{\alpha}_t-ct$ corresponds to either a subordinator or the negation of a subordinator [Reference Sharpe20]. This contradicts the symmetry of the process $X^{\alpha}$ . On the other hand, it is easy to see that

\begin{equation*} f^{\alpha}_t(x) \leq \pi^{-1}\int_{0}^{+\infty}\exp(-ty^{\alpha})\,\mathrm{d}y < +\infty. \end{equation*}

Let $(\tau,Z)$ be two random variables taking values in $(0,+\infty)\times\mathbb{R}\setminus\{0\}$ such that $\tau$ and Z are independent of $X^{\alpha}$ . We define the following process:

\begin{equation*} \zeta_{t} = \begin{cases} \Big({\tau^{1/\alpha}}/{\mathfrak{g}_{Z\tau^{1/\alpha}}^{1/\alpha}}\Big)X_{t\big(\mathfrak{g}_{Z\tau^{1/\alpha}}\big)/\tau}^{\alpha} & \mathrm{if } t<\tau , \\[5pt] Z & \mathrm{if } t\geq\tau, \end{cases} \end{equation*}

where, for a real-valued random variable C,

\begin{equation*} \mathfrak{g}_{C} = \begin{cases} 0 & \mathrm{if } \big\{t \leq 1 \colon X_{t-}^{\alpha} = Ct^{1/\alpha}\big\} = \emptyset, \\[5pt] \sup\big\{t \leq 1 \colon X_{t-}^{\alpha} = Ct^{1/\alpha}\big\} & \mathrm{otherwise}. \end{cases} \end{equation*}

The process $\zeta$ is well defined. Indeed, we have

\begin{align*} \mathbb{P}(\mathfrak{g}_{Z\tau^{1/\alpha}}>0) & = \int_{0}^{+\infty}\int_{\mathbb{R}\setminus\{0\}}\mathbb{P}(\mathfrak{g}_{Z\tau^{1/\alpha}}>0 \mid \tau=r,Z=z)\, \mathbb{P}_{(\tau,Z)}(\mathrm{d}r,\mathrm{d}z) \\ & = \int_{0}^{+\infty}\int_{\mathbb{R}\setminus\{0\}}\mathbb{P}(\mathfrak{g}_{zr^{1/\alpha}}>0)\, \mathbb{P}_{(\tau,Z)}(\mathrm{d}r,\mathrm{d}z) = 1, \end{align*}

where the latter equality holds because, for any non-zero real number c, $\mathbb{P}(\mathfrak{g}_{c}>0) = 1$ (see [Reference Chaumont and Uribe-Bravo7, Theorem 6]), and therefore we obtain that, for any $(r,z)\in(0,+\infty)\times\mathbb{R}\!\setminus\!\{0\}$ , $\mathbb{P}(\mathfrak{g}_{zr^{1/\alpha}}>0) = 1$ . Using [Reference Chaumont and Uribe-Bravo7, Theorem 3] and the fact that $\tau$ and Z are independent of $X^{\alpha}$ , we can show that $\zeta$ is the bridge with length $\tau$ and pinning point Z associated with $X^{\alpha}$ .

2.2. Certain properties of the random time $\tau$

In this subsection, we investigate certain properties of the random time $\tau$ in terms of the nature of the law of the pinning point Z.

Proposition 1. For all $t>0$ , $\mathbb{P}(\{\zeta_t = Z\} \bigtriangleup \{\tau \leq t\})=0$ .

Proof. Using Definition 1(ii), the fact that $X_t^{r,z}$ is absolutely continuous with respect to Lebesgue measure for all $r>t>0$ , along with the observation that $X_t^{r,z}=z$ when $t\geq r$ , we obtain

\begin{align*} \mathbb{P}(\{\zeta_t = Z\} \bigtriangleup \{\tau \leq t\}) & = \mathbb{P}(\zeta_{t}=Z,t<\tau)+\mathbb{P}(\zeta_{t}\neq Z,\tau\leq t) \\ & = \int_{t}^{+\infty}\int_{\mathbb{R}}\mathbb{P}(\zeta_{t}=Z\mid\tau=r,Z=z)\, \mathbb{P}_{(\tau,Z)}(\mathrm{d}r,\mathrm{d}z) \\ & \quad + \int_{0}^{t}\int_{\mathbb{R}}\mathbb{P}(\zeta_{t}\neq Z\mid\tau=r,Z=z)\, \mathbb{P}_{(\tau,Z)}(\mathrm{d}r,\mathrm{d}z) \\ & = \int_{t}^{+\infty}\int_{\mathbb{R}}\mathbb{P}(X_{t}^{r,z}=z)\,\mathbb{P}_{(\tau,Z)}(\mathrm{d}r,\mathrm{d}z) \\ & \quad + \int_{0}^{t}\int_{\mathbb{R}}\mathbb{P}(z\neq z)\,\mathbb{P}_{(\tau,Z)}(\mathrm{d}r,\mathrm{d}z) = 0. \tag*{$\square$} \end{align*}

Remark 3.

  1. (i) The process $\big(\mathbf{1}_{\{\tau \leq t\}}, t>0\big)$ is a modification, under the probability measure $\mathbb{P}$ , of the process $\big(\mathbf{1}_{\{\zeta_t=Z\}},t>0\big)$ .

  2. (ii) The random time $\tau$ is an $(\mathbb{F}^{\zeta}\vee\sigma(Z)\vee\mathcal{N}_{\mathbb{P}})$ -stopping time.

From the well-known Lebesgue decomposition theorem, we see that the law $\mathbb{P}_{Z}$ of Z can be decomposed as

(1) \begin{equation} \mathbb{P}_{Z}=(1-a_{\mathrm{ac}})\mathbb{P}_{Z}^{\mathrm{s}}+a_{\mathrm{ac}}\mathbb{P}_{Z}^{\mathrm{ac}},\end{equation}

where $a_{\mathrm{ac}}$ is a non-negative real number less than or equal to 1, $\mathbb{P}_{Z}^{\mathrm{ac}}$ is absolutely continuous with respect to the Lebesgue measure (there exists a positive function $f_Z(t)$ such that $\mathbb{P}_{Z}^{\mathrm{ac}}(A)=\int_{A} f_Z(s)\, \mathrm{d} s$ for all $A \in \mathcal{B}(\mathbb{R})$ ), and $\mathbb{P}_{Z}^{\mathrm{s}}$ is singular with respect to the Lebesgue measure. Hence, there exists a set $\mathscr{Z}\subset \mathbb{R}$ such that $\mathbb{P}_{Z}^{\mathrm{ac}}(\mathscr{Z}\,)=0$ and $\mathbb{P}_{Z}^{\mathrm{s}}(\mathscr{Z}\,)=1$ .

The singular part can be also decomposed into a discrete part $\mathbb{P}_{Z}^{\mathrm{sd}}$ (pure point part), and a singular continuous part $\mathbb{P}_{Z}^{\mathrm{sc}}$ (has a distribution function that is continuous but not absolutely continuous – it only increases on a set of Lebesgue measure 0), that is,

\begin{equation*} \mathbb{P}_{Z} = a_{\mathrm{sd}}\mathbb{P}_{Z}^{\mathrm{sd}} + a_{\mathrm{sc}}\mathbb{P}_{Z}^{\mathrm{sc}} + a_{\mathrm{ac}}\mathbb{P}_{Z}^{\mathrm{ac}},\end{equation*}

where $a_{\mathrm{sd}}$ and $a_{\mathrm{sc}}$ are two non-negative real numbers such that $a_{\mathrm{sd}}+a_{\mathrm{sc}}+a_{\mathrm{ac}}=1$ . We have the following result.

Proposition 2. Let $\zeta$ be a Lévy bridge with length $\tau$ and pinning point Z. Then $\{\tau\leq t\}\in\sigma(\zeta_t)\vee\mathcal{N}_{\mathbb{P}}$ for all t if and only if $a_{\mathrm{ac}}=0$ .

Proof. Suppose that $a_{\mathrm{ac}}=0$ , that is, the pinning point Z takes values in a set $\mathscr{Z}\;$ of Lebesgue measure zero. Then the process $\big(\mathbf{1}_{\{\tau \leq t\}}, t>0\big)$ is a modification, under the probability measure $\mathbb{P}$ , of the process $\big(\mathbf{1}_{\{\zeta_t\in \mathscr{Z}\}}, t>0\big)$ . Indeed, for all $t>0$ ,

\begin{align*} \mathbb{P}(\{\zeta_t \in \mathscr{Z}\} \bigtriangleup \{\tau \leq t\}) & = \mathbb{P}(\zeta_{t}\in\mathscr{Z},t<\tau) + \mathbb{P}(\zeta_t\in\mathscr{Z}^{\,\;\mathrm{c}},\tau\leq t) \\ & = \int_{t}^{+\infty}\int_{\mathbb{R}}\mathbb{P}(\zeta_t\in\mathscr{Z}\mid\tau=r,Z=z)\, \mathbb{P}_{(\tau,Z)}(\mathrm{d}r,\mathrm{d}z) \\ & \quad + \int_{0}^{t}\int_{\mathbb{R}}\mathbb{P}(\zeta_t\in\mathscr{Z}^{\,\;\mathrm{c}}\mid\tau=r,Z=z)\, \mathbb{P}_{(\tau,Z)}(\mathrm{d}r,\mathrm{d}z) \\ & = \int_{t}^{+\infty}\int_{\mathbb{R}}\mathbb{P}(X_{t}^{r,z}\in\mathscr{Z}\,)\, \mathbb{P}_{(\tau,Z)}(\mathrm{d}r,\mathrm{d}z) + \mathbb{P}(\tau\leq t,Z\in\mathscr{Z}^{\,\;\mathrm{c}}) = 0. \end{align*}

In the latter equality, we have made use of the fact that $\mathbb{P}(Z\in \mathscr{Z}^{\,\;\mathrm{c}})=0$ , the set $\mathscr{Z}\ $ is of Lebesgue measure zero, and that the law of $X_{t}^{r,z}$ is absolutely continuous with respect to the Lebesgue measure when $0<t<r$ . This leads to the conclusion that, for all $t>0$ , the event $\{\tau\leq t \}\in \sigma(\zeta_t)\vee \mathcal{N}_{\mathbb{P}}$ .

Conversely, assume that $a_{\mathrm{ac}}\neq 0$ , It suffices to prove that there exist times $t>0$ such that $\mathbb{E}\big[\mathbf{1}_{\{\tau \leq t\}}\mid\zeta_t\big]\neq\mathbf{1}_{\{\tau \leq t\}}$ . To establish this it is necessary to determine the law of $\tau$ given $\zeta_t$ . It is not difficult to show that $\mathbb{P}_{\zeta_t\vert\tau=r }$ , the law of $\zeta_t$ given $\{\tau=r\}$ , is absolutely continuous with respect to $\nu(\mathrm{d}x)=\mathbb{P}^{s}_{Z}(\mathrm{d}x)+\mathrm{d}x$ . Moreover, its Radon–Nikodym derivative is given by

\begin{align*} q_t(r,x) & = ((1-a_{\mathrm{ac}})\mathbf{1}_{\mathscr{Z}}\,(x) + a_{\mathrm{ac}}\mathbf{1}_{\mathscr{Z}^{\,\;\mathrm{c}}}(x)f_Z(x))\mathbf{1}_{\{r\leq t\}} \\ & \quad + \int_{\mathbb{R}}\frac{f^X_{r-t}(z-x)f^X_t(x)}{f^X_r(z)}\, \mathbb{P}_{Z}(\mathrm{d}z)\mathbf{1}_{\mathscr{Z}^{\,\;\mathrm{c}}}(x)\mathbf{1}_{\{t<r\}}. \end{align*}

That is, for every $B \in \mathcal{B}(\mathbb{R})$ , we have $\mathbb{P}_{\zeta_t\vert\tau=r}(B)=\int_{B}q_t(r,x)\,\nu(\mathrm{d}x)$ . Thus, applying Bayes’ formula, it follows that, for all bounded measurable functions h defined on $(0,+\infty)$ , $\mathbb{P}$ -a.s. (almost surely),

(2) \begin{align} & \mathbb{E}[h(\tau)\mid\zeta_t] = \frac{\int_{0}^{+\infty}h(r)q_t(r,\zeta_t)\,\mathbb{P}_{\tau}(\mathrm{d}r)} {\int_{0}^{+\infty}q_t(r,\zeta_t)\,\mathbb{P}_{\tau}(\mathrm{d}r)} \nonumber \\ & = \frac{f_Z(\zeta_t)\int_{0}^{t}h(r)\,\mathbb{P}_{\tau}(\mathrm{d}r)} {f_Z(\zeta_t)F_{\tau}(t)}\mathbf{1}_{\mathscr{Z}}\,(\zeta_t) \nonumber \\ & \quad + \frac{a_{\mathrm{ac}}\,f_Z(\zeta_t)\int_{0}^{t}h(r)\,\mathbb{P}_{\tau}(\mathrm{d}r) + f^X_t(\zeta_t)\int_{t}^{+\infty}h(r)\int_{\mathbb{R}}\big[\,{f^X_{r-t}(z-\zeta_t)}/{f^X_r(z)}\big]\, \mathbb{P}_{Z}(\mathrm{d}z)\mathbb{P}_{\tau}(\mathrm{d}r)} {a_{\mathrm{ac}}\,f_Z(\zeta_t)F_{\tau}(t) + f^X_t(\zeta_t)\int_{t}^{+\infty}\int_{\mathbb{R}}\big[\,{f^X_{r-t}(z-\zeta_t)}/{f^X_r(z)}\big]\, \mathbb{P}_{Z}(\mathrm{d}z)\,\mathbb{P}_{\tau}(\mathrm{d}r)}\mathbf{1}_{\mathscr{Z}^{\,\;\mathrm{c}}}(\zeta_t). \end{align}

Consequently, we have, $\mathbb{P}$ -a.s.,

\begin{align*} & \mathbb{E}\big[\mathbf{1}_{\{\tau \leq t\}}\mid\zeta_t\big] \\ & = \mathbf{1}_{\mathscr{Z}}\,(\zeta_t) + \frac{a_{\mathrm{ac}}\,f_Z(\zeta_t)F_{\tau}(t)} {a_{\mathrm{ac}}\,f_Z(\zeta_t)F_{\tau}(t) + f^X_t(\zeta_t)\int_{t}^{+\infty}\int_{\mathbb{R}}\big[\,{f^X_{r-t}(z-\zeta_t)}/{f^X_r(z)}\big]\, \mathbb{P}_{Z}(\mathrm{d}z)\,\mathbb{P}_{\tau}(\mathrm{d}r)} \mathbf{1}_{\mathscr{Z}^{\,\;\mathrm{c}}}(\zeta_t). \end{align*}

For $t>0$ such that $0<\mathbb{P}(\tau>t)<1$ , let us define the random set $\mathfrak{N}_t$ given by

\begin{equation*} \mathfrak{N}_t = \biggl\{\int_{t}^{+\infty}\int_{\mathbb{R}} \frac{f^X_{r-t}(z-\zeta_t)f^X_t(\zeta_t)}{f^X_r(z)}\,\mathbb{P}_{Z}(\mathrm{d}z)\,\mathbb{P}_{\tau}(\mathrm{d}r) \neq 0, \, \zeta_t\in\mathscr{Z}^{\,\;\mathrm{c}}, \, f_Z(\zeta_t)\neq 0, \, \tau\leq t \biggr\}. \end{equation*}

It is easy to see that for $t>0$ such that $0<\mathbb{P}(\tau>t)<1$ , we have, $\mathbb{P}$ -a.s.,

\begin{equation*}\int_{t}^{+\infty}\int_{\mathbb{R}}\frac{f^X_{r-t}(z-\zeta_t)f^X_t(\zeta_t)}{f^X_r(z)}\, \mathbb{P}_{Z}(\mathrm{d}z)\,\mathbb{P}_{\tau}(\mathrm{d}r) \neq 0.\end{equation*}

Thus, it follows from Proposition 1, the independence of $\tau$ and Z, and the decomposition in (1) that

\begin{equation*} \mathbb{P}(\mathfrak{N}_t) = \mathbb{P}\big(\zeta_t\in\mathscr{Z}^{\,\;\mathrm{c}}, f_Z(\zeta_t)\neq 0, \tau\leq t\big) = F_{\tau}(t)\mathbb{P}\big(Z\in\mathscr{Z}^{\,\;\mathrm{c}}, f_Z(Z)\neq 0\big) = a_{\mathrm{ac}}F_{\tau}(t) > 0. \end{equation*}

Hence, for $\omega\in\mathfrak{N}_t$ ,

\begin{align*} \dfrac{a_{\mathrm{ac}}\,f_Z(\zeta_t(\omega))F_{\tau}(t)} {a_{\mathrm{ac}}\,f_Z(\zeta_t(\omega))F_{\tau}(t) + f^X_t(\zeta_t(\omega))\int_{t}^{+\infty}\int_{\mathbb{R}} \big[\,{f^X_{r-t}(z-\zeta_t(\omega))}/{f^X_r(z)}\big]\,\mathbb{P}_{Z}(\mathrm{d}z)\,\mathbb{P}_{\tau}(\mathrm{d}r)}<1. \end{align*}

This yields, for $\omega\in\mathfrak{N}_t$ , $\mathbb{E}\big[\mathbf{1}_{\{\tau\leq t\}}\mid\zeta_t\big](\omega) < \mathbf{1}_{\{\tau\leq t\}}(\omega)$ . We can conclude that there exist certain $t>0$ such that, $\mathbb{P}$ -a.s., $\mathbb{E}\big[\mathbf{1}_{\{\tau\leq t\}}\mid\zeta_t\big] \neq \mathbf{1}_{\{\tau\leq t\}}$ , which completes the proof.

2.3. Markov property of the Lévy bridge $\zeta$

In this subsection, we investigate the influence of the distribution of the pinning point Z on the memorylessness of the bridge process $\zeta$ . The following theorem states that if the law $\mathbb{P}_{Z}$ of the pinning point Z does not possess an absolutely continuous part, then the bridge process satisfies the Markov property.

Theorem 1. Assume that $a_{\mathrm{ac}}=0$ . Then, the bridge $\zeta$ with random length $\tau$ and pinning point Z associated with the Lévy process X is Markovian.

Proof. Since $\zeta_0=0$ , it suffices to prove that, for all $n\in\mathbb{N}$ , for every bounded measurable function g defined on $\mathbb{R}$ , and $0 < t_1 < t_2 <\cdots < t_n < u$ , we have, $\mathbb{P}$ -a.s., $\mathbb{E}[g(\zeta_u)\mid\zeta_{t_1},\ldots,\zeta_{t_n}] = \mathbb{E}[g(\zeta_u)\mid\zeta_{t_n}]$ . Since $a_{\mathrm{ac}}=0$ , it follows from Proposition 2 that

\begin{equation*} \mathbb{E}\big[g(\zeta_u)\mathbf{1}_{\{\tau\leq t_n\}}\mid\zeta_{t_1},\ldots,\zeta_{t_n}\big] = \mathbb{E}\big[g(\zeta_{t_n})\mathbf{1}_{\{\tau\leq t_n\}}\mid\zeta_{t_1},\ldots,\zeta_{t_n}\big] = \mathbb{E}\big[g(\zeta_u)\mathbf{1}_{\{\tau\leq t_n\}}\mid\zeta_{t_n}\big]. \end{equation*}

Hence, it remains to show that $\mathbb{E}[g(\zeta_u)\mathbf{1}_{\{t_n<\tau\}}\mid\zeta_{t_1},\ldots,\zeta_{t_n}] = \mathbb{E}[g(\zeta_u)\mathbf{1}_{\{t_n<\tau\}}\mid\zeta_{t_n}]$ . Thus, it suffices to verify that, for every bounded measurable function L on $\mathbb{R}^n$ ,

(3) \begin{equation} \mathbb{E}\big[g(\zeta_u)\mathbf{1}_{\{t_n<\tau\}}L(\zeta_{t_1},\ldots,\zeta_{t_n})\big] = \mathbb{E}\big[\mathbb{E}\big[g(\zeta_u)\mid\zeta_{t_n}\big]\mathbf{1}_{\{t_n<\tau\}}L(\zeta_{t_1},\ldots,\zeta_{t_n})\big]. \end{equation}

To show (3), we first need to compute the law of $\zeta_u$ given $\zeta_{t}$ for $0<t<u$ . From (2), for any bounded measurable function h defined on $(0,+\infty)$ we have, $\mathbb{P}$ -a.s.,

\begin{align*} \mathbb{E}[h(\tau)\mid\zeta_t] & = \int_{0}^{t}\frac{h(r)}{F_{\tau}(t)}\,\mathbb{P}_{\tau}(\mathrm{d}r)\mathbf{1}_{\mathscr{Z}}\,(\zeta_t) \\ & \quad + \frac{\int_{t}^{+\infty}h(r)\int_{\mathbb{R}}\big[\,{f^X_{r-t}(z-\zeta_t)}/{f^X_r(z)}\big]\, \mathbb{P}_Z(\mathrm{d}z)\,\mathbb{P}_{\tau}(\mathrm{d}r)} {\int_{t}^{+\infty}\int_{\mathbb{R}}\big[\,{f^X_{r-t}(z-\zeta_t)}/{f^X_r(z)}\big]\, \mathbb{P}_Z(\mathrm{d}z)\,\mathbb{P}_{\tau}(\mathrm{d}r)}\mathbf{1}_{\mathscr{Z}^{\,\;\mathrm{c}}}(\zeta_t). \end{align*}

Hence, for any bounded measurable function U defined on $(0,+\infty)\times\mathbb{R}$ , with the notation $\zeta^{r,Z}$ representing the bridge with random pinning point Z and deterministic length r associated with X, we have, $\mathbb{P}$ -a.s.,

\begin{align*} \mathbb{E}[U(\tau,Z)\mid\zeta_t=x] & = \int_{0}^{+\infty}\mathbb{E}[U(\tau,Z)\mid\zeta_t=x,\tau=r]\,\mathbb{P}_{\tau\vert\zeta_t=x}(\mathrm{d}r) \\ & = \int_{0}^{+\infty}\mathbb{E}\big[U(r,Z)\mid\zeta^{r,Z}_t=x\big]\,\mathbb{P}_{\tau\vert\zeta_t=x}(\mathrm{d}r) \\ & = \int_{0}^{t}\frac{U(r,x)}{F_{\tau}(t)}\,\mathbb{P}_{\tau}(\mathrm{d}r)\mathbf{1}_{\mathscr{Z}}\,(x) \\ & \quad + \frac{\int_{\mathbb{R}}\int_{t}^{+\infty}U(r,z)\big[\,{f^X_{r-t}(z-x)}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} {\int_{\mathbb{R}}\int_{t}^{+\infty}\big[\,{f^X_{r-t}(z-x)}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)}\mathbf{1}_{\mathscr{Z}^{\,\;\mathrm{c}}}(x), \end{align*}

where we have used in the latter equality the fact that, for any bounded measurable function g defined on $\mathbb{R}$ , we have, $\mathbb{P}$ -a.s.,

(4) \begin{equation} \mathbb{E}\big[g(Z)\mid\zeta_t^{r, Z}=x\big] = g(x)\mathbf{1}_{\{r\leq t\}} + \frac{\int_{\mathbb{R}}g(z)\big[\,{f^X_{r-t}(z-x)}/{f^X_r(z)}\big]\,\mathbb{P}_{Z}(\mathrm{d}z)} {\int_{\mathbb{R}}\big[\,{f^X_{r-t}(z-x)}/{f^X_r(z)}\big]\,\mathbb{P}_{Z}(\mathrm{d}z)}\mathbf{1}_{\{t<r\}}, \end{equation}

which is obtained by a simple application of Bayes’ theorem. By utilizing the fact that

\begin{equation*} \mathbb{E}[g(\zeta_u)\mid\zeta_t=x] = \int_{0}^{+\infty}\int_{\mathbb{R}}\mathbb{E}\big[g\big(X_u^{r,z}\big)\mid X^{r,z}_t=x\big]\, \mathbb{P}_{(\tau,Z)\vert\zeta_t=x}(\mathrm{d}r,\mathrm{d}z), \end{equation*}

we obtain

\begin{align*} \mathbb{E}[g(\zeta_u)\mid\zeta_t] & = g(\zeta_t)\mathbf{1}_{\{\tau\leq t\}} + \frac{\int_{\mathbb{R}}g(z)\int_{t}^{u}\big[\,{f^X_{r-t}(z-\zeta_t)}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} {\int_{\mathbb{R}}\int_{t}^{+\infty}\big[\,f^X_{r-t}(z-\zeta_t)/f^X_r(z)\big]\,\mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} \mathbf{1}_{\{t<\tau\}} \\ & \quad + \int_{\mathbb{R}}g(y)f_{u-t}^X(y-\zeta_t) \frac{\int_{\mathbb{R}}\int_{u}^{+\infty}\big[\,{f^X_{r-u}(z-y)}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} {\int_{\mathbb{R}}\int_{t}^{+\infty}\big[\,{f^X_{r-t}(z-\zeta_t)}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)}\,\mathrm{d}y\,\mathbf{1}_{\{t<\tau\}}. \end{align*}

We are now in a position to demonstrate (3). We have

\begin{align*} & \mathbb{E}[\mathbb{E}[g(\zeta_u)\mid\zeta_{t_n}]\mathbf{1}_{\{t_n<\tau\}}L(\zeta_{t_1},\ldots,\zeta_{t_n})] \\ & = \mathbb{E}\Bigg[\frac{\int_{\mathbb{R}}g(z)\int_{t_n}^{u}\big[\,{f^X_{r-t_n}(z-\zeta_{t_n})}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} {\int_{\mathbb{R}}\int_{t_n}^{+\infty}\big[\,{f^X_{r-t_n}(z-\zeta_{t_n})}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} \mathbf{1}_{\{t_n<\tau\}}L(\zeta_{t_1},\ldots,\zeta_{t_n})\Bigg] \\ & + \mathbb{E}\Bigg[\int_{\mathbb{R}}g(y)f_{u-t_n}^X(y-\zeta_{t_n}) \frac{\int_{\mathbb{R}}\int_{u}^{+\infty}\big[\,{f^X_{r-u}(z-y)}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} {\int_{\mathbb{R}}\int_{t_n}^{+\infty}\big[\,{f^X_{r-t_n}(z-\zeta_{t_n})}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)\,}\mathrm{d}y\, \mathbf{1}_{\{t_n<\tau\}}L(\zeta_{t_1},\ldots,\zeta_{t_n})\Bigg]. \end{align*}

From Definition 1 and the formula of total probability, we have

\begin{align*} & \mathbb{E}\Bigg[\frac{\int_{\mathbb{R}}g(z)\int_{t_n}^{u}\big[\,{f^X_{r-t_n}(z-\zeta_{t_n})}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} {\int_{\mathbb{R}}\int_{t_n}^{+\infty}\big[\,{f^X_{r-t_n}(z-\zeta_{t_n})}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} \mathbf{1}_{\{t_n<\tau\}}L(\zeta_{t_1},\ldots,\zeta_{t_n})\Bigg] \\ & = \int_{\mathbb{R}}\int_{t_n}^{+\infty}\!\mathbb{E}\Bigg[ \frac{\int_{\mathbb{R}}g(z)\int_{t_n}^{u}\big[\,{f^X_{r-t_n}\big(z-X^{r',z'}_{t_n}\big)}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} {\int_{\mathbb{R}}\int_{t_n}^{+\infty}\big[\,{f^X_{r-t_n}\big(z-X^{r',z'}_{t_n}\big)}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)}L\Big(X^{r',z'}_{t_1},\ldots,X^{r',z'}_{t_n}\Big)\Bigg] \mathbb{P}_Z(\mathrm{d}z')\,\mathbb{P}_{\tau}(\mathrm{d}r'). \end{align*}

Using the fact that the bridge law $\mathbb{P}^{r,z}$ is absolutely continuous with respect to $\mathbb{P}$ with density $M^{r,z}$ given by

\begin{equation*} M_t^{r,z} = \frac{\mathrm{d}\mathbb{P}^{r,z}\vert_{\mathcal{F}^{X}_{t}}} {\mathrm{d}\mathbb{P}\vert_{\mathcal{F}^{X}_{t}}} = \frac{f^X_{r-t}(z-X_{t})}{f^X_{r}(z)}, \end{equation*}

that is, for any bounded $\mathcal{F}^{X}_{t}$ -measurable F,

(5) \begin{equation} \mathbb{E}^{r,z}[F] = \mathbb{E}\bigg[F\,\frac{f^X_{r-t}(z-X_{t})}{f^X_{r}(z)}\bigg], \end{equation}

where $\mathbb{E}^{r,z}$ is the expectation under $\mathbb{P}^{r,z}$ , we have

\begin{align*} & \mathbb{E}\Bigg[\frac{\int_{\mathbb{R}}g(z)\int_{t_n}^{u}\Big[\,{f^X_{r-t_n}\Big(z-X^{r',z'}_{t_n}\Big)}/{f^X_r(z)}\Big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} {\int_{\mathbb{R}}\int_{t_n}^{+\infty}\Big[\,{f^X_{r-t_n}\Big(z-X^{r',z'}_{t_n}\Big)}/{f^X_r(z)}\Big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\mathbb{P}_Z(\mathrm{d}z)} L\Big(X^{r',z'}_{t_1},\ldots,X^{r',z'}_{t_n}\Big)\Bigg] \\ & = \mathbb{E}\Bigg[\frac{\int_{\mathbb{R}}g(z)\int_{t_n}^{u}[\,{f^X_{r-t_n}(z-X_{t_n})}/{f^X_r(z)}]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} {\int_{\mathbb{R}}\int_{t_n}^{+\infty}[\,{f^X_{r-t_n}(z-X_{t_n})}/{f^X_r(z)}]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} L(X_{t_1},\ldots,X_{t_n})\frac{f^X_{r'-t_n}(z'-X_{t_n})}{f^X_{r'}(z')}\Bigg], \end{align*}

Fubini and (5) yield

\begin{align*} & \mathbb{E}\Bigg[\frac{\int_{\mathbb{R}}g(z)\int_{t_n}^{u}\big[\,{f^X_{r-t_n}(z-\zeta_{t_n})}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} {\int_{\mathbb{R}}\int_{t_n}^{+\infty}\big[\,{f^X_{r-t_n}(z-\zeta_{t_n})}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} \mathbf{1}_{\{t_n<\tau\}}L(\zeta_{t_1},\ldots,\zeta_{t_n})\Bigg] \\ & = \mathbb{E}\bigg[\int_{\mathbb{R}}g(z)\int_{t_n}^{u}\frac{f^X_{r-t_n}(z-X_{t_n})}{f^X_r(z)}\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)L(X_{t_1},\ldots,X_{t_n})\bigg] \\ & = \int_{\mathbb{R}}g(z)\int_{t_n}^{u}\mathbb{E}\bigg[L(X_{t_1},\ldots,X_{t_n}) \frac{f^X_{r-t_n}(z-X_{t_n})}{f^X_r(z)}\bigg]\,\mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z) \\ & = \int_{\mathbb{R}}g(z)\int_{t_n}^{u}\mathbb{E}\big[L\big(X^{r,z}_{t_1},\ldots,X^{r,z}_{t_n}\big)\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z) = \mathbb{E}\big[g(\zeta_{u})\mathbf{1}_{\{t_n<\tau\leq u\}}L(\zeta_{t_1},\ldots,\zeta_{t_n})\big]. \end{align*}

Similarly, Definition 1, Fubini, and (5) yield

\begin{align*} & \mathbb{E}\Bigg[\!\int_{\mathbb{R}}g(y)f_{u-t_n}^X(y-\zeta_{t_n}) \frac{\int_{\mathbb{R}}\int_{u}^{+\infty}\big[\,{f^X_{r-u}(z-y)}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)} {\int_{\mathbb{R}}\int_{t_n}^{+\infty}\big[\,{f^X_{r-t_n}(z-\zeta_{t_n})}/{f^X_r(z)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)}\,\mathrm{d}y\, \mathbf{1}_{\{t_n<\tau\}}L(\zeta_{t_1},\ldots,\zeta_{t_n})\Bigg] \\ & = \mathbb{E}\bigg[\int_{\mathbb{R}}g(y)f_{u-t_n}^X(y-X_{t_n}) \int_{\mathbb{R}}\int_{u}^{+\infty}\frac{f^X_{r-u}(z-y)}{f^X_r(z)}\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z)\,\mathrm{d}y\,L(X_{t_1},\ldots,X_{t_n})\bigg] \\ & = \int_{\mathbb{R}}\int_{u}^{+\infty}\mathbb{E}\bigg[ \int_{\mathbb{R}}g(y)\frac{f_{u-t_n}^X(y-X_{t_n})f^X_{r-u}(z-y)}{f^X_r(z)}\, \mathrm{d}y\,L(X_{t_1},\ldots,X_{t_n})\bigg]\,\mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z) \\ & = \int_{\mathbb{R}}\int_{u}^{+\infty}\mathbb{E}\bigg[ \int_{\mathbb{R}}g(y)\frac{f_{u-t_n}^X\big(y-X^{r,z}_{t_n}\big)f^X_{r-u}(z-y)}{f_{r-t_n}^X\big(z-X^{r,z}_{t_n}\big)}\, \mathrm{d}y\,L\big(X^{r,z}_{t_1},\ldots,X^{r,z}_{t_n}\big)\bigg]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z). \end{align*}

On the other hand, using the Markov property of $X^{r,z}$ we obtain

\begin{align*} & \int_{\mathbb{R}}\int_{u}^{+\infty}\mathbb{E}\bigg[ \int_{\mathbb{R}}g(y)\frac{f_{u-t_n}^X\big(y-X^{r,z}_{t_n}\big)f^X_{r-u}(z-y)}{f_{r-t_n}^X\big(z-X^{r,z}_{t_n}\big)}\, \mathrm{d}y\,L\big(X^{r,z}_{t_1},\ldots,X^{r,z}_{t_n}\big)\bigg]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z) \\ & = \int_{\mathbb{R}}\int_{u}^{+\infty}\mathbb{E}[\mathbb{E}\big[g\big(X^{r,z}_{u}\big)\mid X^{r,z}_{t_n}\big] L\big(X^{r,z}_{t_1},\ldots,X^{r,z}_{t_n}\big)]\,\mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z) \\ & = \int_{\mathbb{R}}\int_{u}^{+\infty}\mathbb{E}\big[g(X^{r,z}_{u})L\big(X^{r,z}_{t_1},\ldots,X^{r,z}_{t_n}\big)\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)\,\mathbb{P}_Z(\mathrm{d}z) = \mathbb{E}\big[g(\zeta_u)\mathbf{1}_{\{u<\tau\}}L\big(\zeta_{t_1},\ldots,\zeta_{t_n}\big)\big]. \end{align*}

Combining all this, we obtain the asserted result (3); the proof of the theorem is complete.

We are now ready to state the second main result of this paper. This result highlights the importance of the pinning point’s distribution in determining the memorylessness and stochastic dynamics of the bridge process.

Theorem 2. Assume that $a_{\mathrm{ac}}\neq 0$ . Then there exist non-constant random times $\tau$ such that the Lévy bridge $\zeta$ , with length $\tau$ and pinning point Z, does not possess the Markov property with respect to its natural filtration.

Proof. Assume that $\zeta$ is Markovian. Hence, for all $0<t<u$ , and for all bounded continuous functions g, we have, $\mathbb{P}$ -a.s., $\mathbb{E}[g(\zeta_{u}) \mid \mathcal{F}^{\zeta}_{t}] = \mathbb{E}[g(\zeta_{u}) \mid \zeta_{t}]$ . Since $\zeta_u=Z$ , on $\{\tau\leq u\}$ and $\mathbb{P}(\tau<+\infty)=1$ $\zeta_u$ converges to Z a.s. as u goes to $+\infty$ . Thus,

(6) \begin{equation} \mathbb{E}\big[g(Z) \mid \mathcal{F}^{\zeta}_{t}\big] = \lim_{u\rightarrow +\infty}\mathbb{E}\big[g(\zeta_{u}) \mid \mathcal{F}^{\zeta}_{t}\big] = \lim_{u\rightarrow +\infty}\mathbb{E}[g(\zeta_{u}) \mid \zeta_{t}] = \mathbb{E}[g(Z) \mid \zeta_{t}]. \end{equation}

With the notation $\zeta^{r,Z}$ representing the bridge with random pinning point Z and deterministic length r associated with X, we have, $\mathbb{P}$ -a.s.,

\begin{align*} \mathbb{E}[g(Z)\mid\zeta_t=x] & = \int_{0}^{+\infty}\mathbb{E}[g(Z)\mid\zeta_t=x,\tau=r]\, \mathbb{P}_{\tau\vert\zeta_t=x}(\mathrm{d}r)\\& = \int_{0}^{+\infty}\mathbb{E}[g(Z)\mid\zeta^{r,Z}_t=x]\,\mathbb{P}_{\tau\vert\zeta_t=x}(\mathrm{d}r). \end{align*}

This, (2), and (4) show that

(7) \begin{align} & \mathbb{E}[g(Z)\mid\zeta_t] = g(\zeta_t)\mathbf{1}_{\mathscr{Z}}\,(\zeta_t) \nonumber \\ & \quad + \frac{a_{\mathrm{ac}}\,f_Z(\zeta_t)g(\zeta_t)F_{\tau}(t) + f^X_t(\zeta_t)\int_{t}^{+\infty}\int_{\mathbb{R}}g(z)\big[\,{f^X_{r-t}(z-\zeta_t)}/{f^X_r(z)}\big]\, \mathbb{P}_{Z}(\mathrm{d}z)\,\mathbb{P}_{\tau}(\mathrm{d}r)} {a_{\mathrm{ac}}\,f_Z(\zeta_t)F_{\tau}(t) + f^X_t(\zeta_t)\int_{t}^{+\infty}\int_{\mathbb{R}}\big[\,{f^X_{r-t}(z-\zeta_t)}/{f^X_r(z)}\big]\, \mathbb{P}_{Z}(\mathrm{d}z)\,\mathbb{P}_{\tau}(\mathrm{d}r)}\mathbf{1}_{\mathscr{Z}^{\,\;\mathrm{c}}}(\zeta_t). \end{align}

Let $0<t_1<t_2$ be such that $F_{\tau}(t_1)=0$ and $0<F_{\tau}(t_2)<1$ . For $B_1,B_2 \in \mathcal{B}(\mathbb{R})$ , the formula of total probability and the fact that $\mathbb{P}(\tau\leq t_1)=0$ yield

\begin{align*} \mathbb{P}((\zeta_{t_1},\zeta_{t_2})\in B_1 \times B_2\mid \tau=r) & = \int_{\mathbb{R}}\mathbb{P}((\zeta_{t_1},\zeta_{t_2})\in B_1 \times B_2\mid \tau=r,Z=z)\, \mathbb{P}_{Z}(\mathrm{d}z) \\ & = \int_{\mathbb{R}}\mathbb{P}((X_{t_1}^{r,z},X_{t_2}^{r,z})\in B_1 \times B_2)\,\mathbb{P}_{Z}(\mathrm{d}z) \\ & = \int_{B_{1}\times B_{2}}q_{t_{1},t_{2}}(r,x_{1},x_{2})\, \mathrm{d}x_1\otimes\big(\mathrm{d}x_2+\mathbb{P}_{Z}^s(\mathrm{d}x_2)\big), \end{align*}

where

\begin{align*} q_{t_1,t_2}(r,x_1,x_2) & = ((1-a_{\mathrm{ac}})\mathbf{1}_{\mathscr{Z}}\,(x_2)+a_{\mathrm{ac}}\,f_Z(x_2)\mathbf{1}_{\mathscr{Z}^{\,\;\mathrm{c}}}(x_2)) \frac{f^X_{r-t_1}(x_2-x_1)f^X_{t_1}(x_1)}{f^X_{r}(x_2)}\mathbf{1}_{\{t_1<r\leq t_2\}} \\ & \quad + f^X_{t_1}(x_1)f^X_{t_2-t_1}(x_2-x_1)\int_{\mathbb{R}}\frac{f^X_{r-t_2}(z-x_2)}{f^X_r(z)}\, \mathbb{P}_{Z}(\mathrm{d}z)\,\mathbf{1}_{\mathscr{Z}}\,(x_2)\,\mathbf{1}_{\{t_2<r\}}. \end{align*}

Hence, it follows from Bayes’ theorem that, for all bounded measurable functions h defined on $(0,+\infty)$ , $\mathbb{P}$ -a.s.,

(8) \begin{equation} \mathbb{E}[h(\tau)\mid\zeta_{t_1}=x_1,\zeta_{t_2}=x_2] = \mathbf{1}_{\mathscr{Z}}\,(x_2)\frac{\int_{t_1}^{t_2}h(r)\big[\,{f^X_{r-t_1}(x_2-x_1)}/{f^X_{r}(x_2)}\big]\, \mathbb{P}_{\tau}(\mathrm{d}r)} {\int_{t_1}^{t_2}\big[\,{f^X_{r-t_1}(x_2-x_1)}/{f^X_{r}(x_2)}\big]\,\mathbb{P}_{\tau}(\mathrm{d}r)} + \mathbf{1}_{\mathscr{Z}^{\,\;\mathrm{c}}}(x_2) \frac{\xi}{\eta}, \end{equation}

where

\begin{align*} \xi & = a_{\mathrm{ac}}\,f_Z(x_2)\int_{t_1}^{t_2}h(r)\frac{f^X_{r-t_1}(x_2-x_1)}{f^X_{r}(x_2)}\, \mathbb{P}_{\tau}(\mathrm{d}r) \\ & \quad + f^X_{t_2-t_1}(x_2-x_1)\int_{t_2}^{+\infty}h(r)\int_{\mathbb{R}}\frac{f^X_{r-t_2}(z-x_2)}{f^X_r(z)}\, \mathbb{P}_Z(\mathrm{d}z)\,\mathbb{P}_{\tau}(\mathrm{d}r), \\ \eta & = a_{\mathrm{ac}}\,f_Z(x_2)\int_{t_1}^{t_2}\frac{f^X_{r-t_1}(x_{2}-x_{1})}{f^X_{r}(x_{2})}\, \mathbb{P}_{\tau}(\mathrm{d}r) \\ & \quad + f^X_{t_2-t_1}(x_2-x_{1})\int_{t_2}^{+\infty}\int_{\mathbb{R}}\frac{f^X_{r-t_2}(z-x_2)}{f^X_r(z)}\, \mathbb{P}_Z(\mathrm{d}z)\,\mathbb{P}_{\tau}(\mathrm{d}r). \end{align*}

On the other hand, we have

(9) \begin{align} \mathbb{E}[g(Z)\mid\zeta_{t_1}=x_1,\zeta_{t_2}=x_2] & = \int_{0}^{+\infty}\mathbb{E}[g(Z)\mid\zeta_{t_1}=x_1,\zeta_{t_2}=x_2,\tau=r]\, \mathbb{P}_{\tau\vert\zeta_{t_1}=x_1,\zeta_{t_2}=x_2}(\mathrm{d}r) \nonumber \\ & = \int_{0}^{+\infty}\mathbb{E}\big[g(Z)\mid\zeta^{r,Z}_{t_2}=x\big]\, \mathbb{P}_{\tau\vert\zeta_{t_1}=x_1,\zeta_{t_2}=x_2}(\mathrm{d}r). \end{align}

Thus, (4), (8), and (9) show that

(10) \begin{align} & \mathbb{E}[g(Z)\mid\zeta_{t_1},\zeta_{t_2}] = g(\zeta_{t_2})\mathbf{1}_{\mathscr{Z}}\,(\zeta_{t_2}) + \nonumber \\ & \frac{a_{\mathrm{ac}}\,f_Z(\zeta_{t_2})g(\zeta_{t_2}) + U_{t_1,t_2}(\zeta_{t_1},\zeta_{t_2})\int_{t_2}^{+\infty}\int_{\mathbb{R}}g(z)[\,{f^X_{r-t_2}(z-\zeta_{t_2})}/{f^X_r(z)}] f_Z(z)\,\mathrm{d}z\,\mathbb{P}_{\tau}(\mathrm{d}r)} {a_{\mathrm{ac}}\,f_Z(\zeta_{t_2}) + U_{t_1,t_2}(\zeta_{t_1},\zeta_{t_2})\int_{t_2}^{+\infty}\int_{\mathbb{R}}[\,{f^X_{r-t_2}(z-\zeta_{t_2})}/{f^X_r(z)}] f_Z(z)\,\mathrm{d}z\,\mathbb{P}_{\tau}(\mathrm{d}r)} \mathbf{1}_{\mathscr{Z}^{\,\;\mathrm{c}}}(\zeta_{t_2}), \end{align}

where

\begin{equation*} U_{t_1,t_2}(x_{1},x_{2}) = \frac{f^X_{t_2-t_1}(x_{2}-x_{1})} {\int_{t_1}^{t_2}\big[\,{f^X_{r-t_1}(x_{2}-x_{1})}/{f^X_{r}(x_{2})}\big]\,\mathbb{P}_{\tau}(\mathrm{d}r)}, \qquad x_1,x_2\in \mathbb{R}, \ 0<t_1<t_2. \end{equation*}

From (7), we have, $\mathbb{P}$ -a.s.,

(11) \begin{align} & \mathbb{E}[g(Z)\mid\zeta_{t_2}] = g(\zeta_{t_2})\mathbf{1}_{\mathscr{Z}}\,(\zeta_{t_2}) + \nonumber \\ & \frac{a_{\mathrm{ac}}\,f_Z(\zeta_{t_2})g(\zeta_{t_2}) + \big[\,{f^X_{t_2}(\zeta_{t_2})}/{F_{\tau}(t_2)}\big] \int_{t_2}^{+\infty}\int_{\mathbb{R}}g(z)[\,{f^X_{r-t_2}(z-\zeta_{t_2})}/{f^X_r(z)}]f_Z(z)\, \mathrm{d}z\,\mathbb{P}_{\tau}(\mathrm{d}r)} {a_{\mathrm{ac}}\,f_Z(\zeta_{t_2})F_{\tau}(t_2) + \big[\,{f^X_{t_2}(\zeta_{t_2})}/{F_{\tau}(t_2)}\big] \int_{t_2}^{+\infty}\int_{\mathbb{R}}[\,{f^X_{r-_2}(z-\zeta_{t_2})}/{f^X_r(z)}]f_Z(z)\, \mathrm{d}z\mathbb{P}_{\tau}(\mathrm{d}r)}\mathbf{1}_{\mathscr{Z}^{\,\;\mathrm{c}}}(\zeta_{t_2}). \end{align}

Thus, it follows from (6), (10), and (11) that $U_{t_1,t_2}(\zeta_{t_1},\zeta_{t_2}) = {f^X_{t_2}(\zeta_{t_2})}/{F_{\tau}(t_2)}$ , a contradiction, since if, for instance, $\tau$ is a two-point random variable such that $\mathbb{P}(\tau=T_1)=\mathbb{P}(\tau=T_2)=\frac{1}{2}$ and $t_1<T_1<t_2<T_2$ , we have

\begin{equation*} \frac{f^X_{t_2-t_1}(\zeta_{t_2}-\zeta_{t_1})}{f^X_{T_1-t_1}(\zeta_{t_2}-\zeta_{t_1})}\,f^X_{T_1}(\zeta_{t_2}) \neq f^X_{t_2}\big(\zeta_{t_2}\big). \end{equation*}

This completes the proof.

Since the pinning point has a significant influence on the Markov property of the bridge process, it is worth noting that the Markov property still holds when considering the two-dimensional process consisting of both the pinning point and the bridge process.

Theorem 3. The two-dimensional process Y defined by $Y_t=(Z,\zeta_{t})$ , $t\geq 0$ , is a Markov process with respect to its natural filtration. Moreover, for any $0<t<u$ and for every bounded measurable function G defined on $\mathbb{R}^2$ ,

\begin{align*} \mathbb{E}[G(Y_u)\mid Y_{t}] & = G(Z,Z)\Bigg(\mathbf{1}_{\{\zeta_t=Z\}} + \frac{\int_{t}^{u}\big[\,{f^X_{r-t}(Z-\zeta_t)}/{f^X_r(Z)}\big]\,\mathbb{P}_{\tau}(\mathrm{d}r)} {\int_{t}^{+\infty}\big[\,{f^X_{r-t}(Z-\zeta_t)}/{f^X_r(Z)}\big]\,\mathbb{P}_{\tau}(\mathrm{d}r)} \mathbf{1}_{\{\zeta_t\neq Z\}} \Bigg) \\ & \quad + \int_{\mathbb{R}}G(Z,y)f^X_{u-t}(y-\zeta_t) \frac{\int_u^{+\infty}\big[\,{f^X_{r-u}(Z-y)}/{f^X_{r}(Z)}\big]\,\mathbb{P}_{\tau}(\mathrm{d}r)} {\int_{t}^{+\infty}\big[\,{f^X_{r-t}(Z-\zeta_t)}/{f^X_r(Z)}\big]\,\mathbb{P}_{\tau}(\mathrm{d}r)}\,\mathrm{d}y\, \mathbf{1}_{\{\zeta_t\neq Z\}}. \end{align*}

Proof. Using the fact that $\zeta^z$ is a Markov process with respect to its natural filtration (see [Reference Erraoui, Hilbert and Louriki10, Theorem 3.8]), for all $n\in\mathbb{N}$ and $0 < t_1 < t_2 <\cdots < t_n < u$ , and for all measurable functions G defined on $\mathbb{R}^2$ such that $G(Z,\zeta_u)$ is integrable, we have, $\mathbb{P}$ -a.s.,

\begin{align*} \mathbb{E}[G(Y_u)\mid Y_{t_1}=y_1,\ldots,Y_{t_n}=y_n] & = \mathbb{E}[G(Z,\zeta_u)\mid\zeta_{t_1}=x_1,\ldots,\zeta_{t_n}=x_n,Z=z] \\ & = \mathbb{E}[G(z,\zeta_u^z)\mid\zeta_{t_1}^z=x_1,\ldots,\zeta_{t_n}^z=x_n] \\ & = \mathbb{E}[G(z,\zeta_u^z)\mid\zeta_{t_n}^z=x_n] = \mathbb{E}[G(Y_u)\mid Y_{t_n}=y_n]. \end{align*}

Again, it follows from [Reference Erraoui, Hilbert and Louriki10, Theorem 3.8] that for $y=(z,x)\in\mathbb{R}^2$ , for any $0<t<u$ , and for every bounded measurable function G,

\begin{align*} \mathbb{E}[G(Y_u)\mid Y_{t}=y] & = [G(z,\zeta_u^z)\mid \zeta_{t}^z=x] \\ & = G(z,z)\Bigg(\mathbf{1}_{\{x=z\}} + \frac{\int_{t}^{u}[\,{f^X_{r-t}(z-x)}/{f^X_r(z)}]\,\mathbb{P}_{\tau}(\mathrm{d}r)} {\int_{t}^{+\infty}[\,{f^X_{r-t}(z-x)}/{f^X_r(z)}]\,\mathbb{P}_{\tau}(\mathrm{d}r)}\mathbf{1}_{\{x\neq z\}} \Bigg) \\ & \quad + \int_{\mathbb{R}}G(z,y)f^X_{u-t}(y-x) \frac{\int_u^{+\infty}[\,{f^X_{r-u}(z-y)}/{f^X_{r}(z)}]\,\mathbb{P}_{\tau}(\mathrm{d}r)} {\int_{t}^{+\infty}[\,{f^X_{r-t}(z-x)}\,{f^X_r(z)}]\,\mathbb{P}_{\tau}(\mathrm{d}r)}\,\mathrm{d}y\, \mathbf{1}_{\{x\neq z\}}. \end{align*}

This completes the proof.

Acknowledgement

The author wishes to thank the reviewer for insightful comments.

Funding information

There are no funding bodies to thank relating to the creation of this article.

Competing interests

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

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