1. Introduction
The pricing problem of options with credit risk, also known as “vulnerable options”, has been extensively studied by numerous researchers. Vulnerable options are financial derivatives that take into account the credit risk of the counterparty. In general, two models have been used to model credit risk are the structural model and the intensity-based model. The structural model, proposed by Merton [
1], Black and Cox [
2] and Geske [
3], depends on the option issuer’s firm value process. A credit event occurs in the structural model if the firm value process falls below the option issuer’s liability value at maturity. The intensity-based model, initially developed by Jarrow and Turnbull [
4], Lando [
5] and Jarrow and Yu [
6], determines a credit event based on the jump of a Poisson process with a given intensity. In other words, the event is triggered by the first jump of the process, and there is no direct relationship between the option issuer’s value and the credit event.
The research on vulnerable options began primarily with a structural approach. As a result, the structural model has been used in many studies in the past to model credit risk in vulnerable option pricing. Credit events occur in the structural model when a firm’s asset value falls below a specified threshold. Johnson and Stulz [
7] were the first to introduce a vulnerable European option pricing model in which the option is the counterparty’s sole liability. Klein [
8] extended the results of Johnson and Stulz [
7] by allowing the option writer to have other liabilities and providing a correlation between the underlying asset and the counterparty’s asset. Liao and Huang [
9] considered the option issuer’s potential default during the remaining life of the option and developed pricing formulas for vulnerable options with stochastic interest rate. Jeon and Kim [
10] used the Mellin transform approach to develop the works of [
9] as two types of options. More recently, Wang [
11], He et al. [
12], Kim et al. [
13] and Jeon et al. [
14] investigated the pricing of vulnerable options in the presence of stochastic volatility affecting asset price processes. In addition, there have been numerous research on vulnerable options with multi-assets [
15,
16,
17,
18,
19].
We utilize an intensity-based model to capture credit risk for this study since it is commonly used to evaluate the prices of credit derivatives such as credit default swaps (CDS) [
20,
21], defaultable bonds [
22], total return swap (TRS) [
23,
24], and others. We use an intensity-based model to investigate the pricing of vulnerable options with multi-assets. There have recently been studies on vulnerable options within the framework of the intensity-based model. Fard [
25] derived a pricing formula for vulnerable option under a generalized jump model and used an intensity-based model to account for counterparty credit risk. Wang [
26] applied Generalized AutoRegressive Conditional Heteroskedasticity (GARCH) model for the underlying asset process and an intensity-based model for counterparty credit risk to obtain a solution for the price of vulnerable options under a discrete time model. Koo and Kim [
27] chose an intensity-based model to capture the option issuer’s credit event and provided an explicit analytical valuation formula for a catastrophe put option with default risk using the multidimensional Girsanov theorem. Moreover, Pasricha and Goel [
28] investigated a vulnerable power exchange option with two underlying assets within an intensity-based model using a doubly stochastic Poisson process to model the counterparty’s credit event and assuming correlation among the three underlying assets in both the continuous and jump components. Wang [
29] derived explicit pricing formula for vulnerable Asian option within an intensity-based model when the underlying asset process follows a two-factor stochastic volatility model.
We present a simple method for pricing vulnerable options with two underlying assets within an intensity-based model in this paper,. Based on Fard’s model [
25], we assume that the default intensity process, which is correlated with the underlying assets, follows a mean-reverting Ornstein-Uhlenbeck (OU) process. However, unlike Fard’s approach, we do not use the change of measure technique. Instead, we provide a simplified valuation method for pricing vulnerable options with correlated underlying assets that is based on the probabilistic approach. Using this proposed method, we derive closed-form pricing formulas for vulnerable exchange option and vulnerable foreign equity option in particular. Furthermore, we examine the accuracy of the formulas using the Monte Carlo (MC) simulation.
The rest of the paper is organized as follows. In
Section 2, we introduce the underlying assets for pricing vulnerable options, along with an intensity-based model to account for credit risk. In
Section 3, we provide the valuation formulas for vulnerable exchange options and vulnerable foreign equity options. Additionally, we introduce the lemmas used in option pricing. In
Section 4, we carry out some numerical experiments to show the accuracy of our formulas obtained in
Section 3. Finally, in
Section 5, we present concluding remarks.
2. The Model
We assume that there are no arbitrage opportunities in the economy represented by a filtered complete probability space
where
Q is a risk-neutral probability measure and
satisfies the usual conditions. Under the measure
Q, the dynamics of two underlying assets are assumed to be
where
r is a risk-free interest rate,
is volatility, and
and
are the correlated standard Brownian motions satisfying
. As in Fard [
25], we assume that the process of default intensity is given by
where
and
are positive constants and
is the standard Brownian motion satisfying
and
. With the process
, the default time
of option issuer is defined by
where
T is the maturity and
denotes the expectation under the measure
Q. Define
be the
-field generated by the price processes of underlying asset
such that
. Similarly, the filtration of the default intensity
and the filtration of the default time
are defined as
and
, respectively. Then, the enlarged filtration
is generated by
, where
is the indicator function.
Let
w be the recovery rate of the vulnerable option. Then, based on the results of Lando [
5] and Fard [
25], the price of vulnerable option with two underlying assets at time 0 in the intensity based model can be expressed as
where
denotes the payoff function of option and
w is a constant satisfying
.
3. The Valuation of Vulnerable Options with Two Underlying Assets
In this section, we present a simplified approach for pricing of vulnerable options with two underlying assets based on Equation (
1). The proposed approach provides the option pricing formula without the method of changing measure. We now introduce the lemmas to obtain the pricing formulas.
Lemma 1. Let and be random variables which have a bivariate normal distribution. Then, for any constant k,where is the variance operator, is the covariance operator and is the cumulative standard normal distribution function. Proof. For convenience, we write expectations and variances of random variables as
respectively.
By the conditional distribution of
given
and the moment generating functions of normal variables, we have
where
k is some constant and
is the correlation between
and
. Then, by the change of variable
, we have
This completes the proof. □
Lemma 2. Let and be random variables which have a trivariate normal distribution. Then,for which the expectations exist for any function . Proof. Let us define the function
such that
where
f is the joint density function of
. Then, we have
We now consider the moment generating function (MGF) of
. That is, MGF of
is given by
. If
, we can find that
Here,
has a normal distribution. It follows that
Since MGF uniquely determines the distribution,
becomes a density function of
. Therefore, we conclude that
This completes the proof. □
We investigate the pricing of vulnerable options with two underlying assets under the intensity based model using Lemmas 1 and 2. Specifically, we deal with two kinds of options: vulnerable foreign equity option and vulnerable exchange option, and derive the closed-form pricing formulas of the options.
3.1. Vulnerable Exchange Option
Margrabe [
30] first derived the closed-form pricing formula of the european exchange option which provides the option holder the right to exchange one risky asset for another. Since its introduction by Margrabe [
30], the option has become one of the most popular exotic options in the over-the-counter (OTC) market. We assume that the dynamics of underlying assets and default intensity follow the processes defined in the previous section. From Equation (
1), the vulnerable exchange option price at time 0 with maturity
T is given by
Then, using the Lemmas 1 and 2, we can derive the closed-form pricing formula of vulnerable exchange option in the intensity based model.
Theorem 1. The price of vulnerable exchange option at time 0 is given bywhere Proof. Using Lemma 2, we can decompose
into two expectations as follows.
where
and
Using the Ito isometry, we find that the random variable
is normally distributed with mean 0 and variance
. Then, the first expectation in Equation (
4) can be calculated easily. Next, let us consider the second expectation in Equation (
4). The expectation can be represented by
is normally distributed with mean 0 and variance
. Then, by applying Lemma 1, we can calculate two expectations in Equation (
5).
This completes the formula for . Finally, since is Margrabe’s formula which is well known, we can obtain the pricing formula for vulnerable exchange option. □
Remark 1. Theorem 1 is also applicable to the vulnerable european options in the intensity based model. The vulnerable european call option price can be obtained by setting strike and .
3.2. Vulnerable Foreign Equity Option
Foreign equity options are contingent claims where the payoffs are determined by underlying assets in one currency, but the actual payoff is converted to another currency at maturity. Following Kwok [
31], there are four types of foreign equity options. Among them, we consider a foreign equity option call stuck in domestic currency in this paper.
Let
and
be the asset price in foreign currency and the asset price in domestic currency, respectively. We denote the exchange rate specified in domestic currency per unit of the foreign currency at time
t by
, so that the relation between
and
is formulated as
. We also assume that
and
are the domestic and foreign risk-free interest rates, respectively. As shown by Kwok and Wong [
32] and Martzoukos [
33], under risk-neutral probability measure
Q, the price processes for
and
are given by
where
q is the dividend of the asset,
is the volatility of the asset and
is the standard Brownian motion, respectively. Also, the exchange rate process
is given by
where
is the volatility of exchange rate and
is the standard Brownian motion satisfying
under the measure
Q. Then, with the process of default intensity
defined in the previous section, a vulnerable foreign equity option call price in domestic currency at time 0 with domestic strike
K and maturity
T is given by
We present the closed-form pricing formula of vulnerable foreign equity option in the the following theorem.
Theorem 2. The price of vulnerable foreign equity option at time 0 is given bywhere and are defined in Theorem 1, and Proof. Similar to Theorem 1, applying Lemma 2, we can rewrite
as
where
, and
The first expectation in Equation (
8) can be calculated easily, and the second expectation can be represented by
Since
is normally distributed with mean 0 and variance
, the second expectation in Equation (
9) is
In Equation (
9), the expectations can be calculated using Lemma 1. Moreover,
can be calculated easily without the use of Lemma 2. Finally, we obtain the pricing formula combining above results . □
Remark 2. As in Fard [25], the pricing formulas in Theorems 1 and 2 can be derived using the change of measure method. However, in the intensity based model, the approach based on Lemma 1 and Lemma 2 is simpler for pricing vulnerable options with two underlying assets. 5. Concluding Remarks
In this paper, we investigate a simple approach for pricing vulnerable options with two correlated underlying assets in an intensity-based model. The mean-reverting OU process, which is correlated with the underlying assets, is used to model credit risk. We obtain option pricing formulas using the properties of three random variables without changing the measure. The approach presented in this study is easily expanded to more general vulnerable options in the intensity-based model. We derive closed-form pricing formulas for two types of options with two underlying assets using the proposed approach: exchange option and and foreign equity option. Finally, we provide numerical results using the MC simulation method to show the accuracy of our option pricing formula and graphs to illustrate the impacts of different parameters on option price.
This study employs the mean-reverting OU process for stochastic intensity based on Fard’s model [
25], however it has a limitation: the intensity cannot be negative mathematically, but the mean-reverting OU process for intensity can have negative values. To overcome this problem, stochastic intensity models that do not allow negative values, such as the CIR model, should be used to vulnerable option pricing in the intensity-based model. This will be studied further in the future via the change of measure method.