3.1. Definition of Intrinsic Value
Our definition of intrinsic values is based on the idea of setting up a hypothetical market at a fixed time point t with an underlying process, a process of claims on the underlying, and prices as-if the market were deterministic. The hypothetical market is fixed at time t, consistent with all market prices and therefore measurable with respect to . Thereby, the interest rate r can be replaced by the forward interest rate everywhere in the hypothetical market, and the dynamics of the asset S are replaced by the dynamics of the intrinsic value of the asset . The intrinsic value of the value process is defined as the value of the claim in this as-if deterministic market.
Definition 1. We define the intrinsic value of the asset and the value process, and , at time u calculated at a fixed time by interchanging the interest rate with the forward interest rate calculated at time t and by eliminating uncertainty from the financial market from time t onwards, hence:with the functions g, ϕ, and Φ as defined in the previous section. The intrinsic value of the asset and the value process are measurable with respect to .
It is appropriate to relate the intrinsic value definition above with the conventional intuition of the intrinsic value being the option value if the option is exercised now. There, one must carefully distinguish European options from American options. For a European option, the decision to exercise now means, for example in the case of a call option, that you must decide now whether you want to buy, at maturity, the stock at strike price K. Consider the classic Black–Scholes model; since you can buy the stock today at price and the strike price K at price , the intrinsic value of the option becomes . This intrinsic value of a European call option conforms with our intrinsic value definition. In the European call case it is not an option of when to buy, only whether to buy. The intrinsic value of a European put option becomes .
For the American option, things are more complicated. The conventional intrinsic value of an American call (put) is (). That is the value if the option is exercised today, and exercise here means both choosing to buy and actually buying. We did not even speak of exercise timing options in our definition, but the natural generalization is to maximize the intrinsic value over exercise times in an as-if market. Then, in the Black–Scholes model with , our intrinsic value of the American call option becomes , since it maximizes the intrinsic value to exercise at time T, even in the as-if market. Note that our intrinsic values of the European and American calls coincide but that our intrinsic value of the American call does not conform with the conventional definition. In the case of an American put, the intrinsic value is maximized by exercising now in the as-if market such that our intrinsic value becomes . Note that our intrinsic values for the European and American puts do not coincide but that our intrinsic value of the American put does conform with the conventional definition. The difference between the call and the put is of course related to the fact that the American call should not be exercised prematurely, not even in the as-if market, whereas the American put should, even in the as-if market.
A different way to think of our intrinsic value is that it is the value of the option in the original stochastic market in the case where the decision about whether to buy or not to buy (in the case of a call) is made on the basis of the information one has today. Our intrinsic value is the value of the option as-if one does not learn more about the realization of S before deciding to exercise the option to buy (in the case of a call).
We now consider a decomposition of the value process in its intrinsic value and time value
Such a decomposition is standard. Following our definition of the intrinsic value, the time value represents the value added from being allowed to base optional decisions in the future on future values and not just on the current values. Thus, time value is the value of information added over time. For the conventional intrinsic value (see above), the time value can be thought of as the value of not having to exercise necessarily today but being able to time the exercise better. For plain vanilla options, this has a clear meaning. For more general options, this idea may be more difficult to generalize, whereas our definition can be directly generalized.
Obviously, one can write
for some function
. We are going to work with an approximation of the time value where we disregard some of the arguments in the function
, for example, not allowing for a stochastic
means approximating, for a deterministic and possibly parametric function
, by
This approximation reflects the idea that options lose their time value over time. This is obviously true when the time value reflects the value added by information added in the future. However, it is obviously an approximation to assume that the function is independent of the
. Even simpler is the approximation
for a constant
. This implies
Therefore, if approximated by a function , one would prefer a function fulfilling . The approximation by a constant is also necessarily inaccurate at time T.
In the following, we approximate the value via a parametric relation between the claim value,
V, and the intrinsic value of the claim value,
. The assumption is that the value process is linear in its intrinsic value. This does not mean that we truly believe that the value is linear in the intrinsic value. This is instead a first approximation that can be intuitively thought of as being based on a first order expansion of the value around the intrinsic value. Thus, we know that we already lose accuracy at this state. Other more involved parametric forms could be proposed and the steps of our method, as explained in the next section, could be properly adapted to any parametric form. We stress that our way of working with the intrinsic value, as a key to break down the original and utterly complicated problem into a series of solvable sub-problems, does not as such depend on the special case of linearity. That is merely chosen as a simple case of demonstration, and its merits and drawbacks are made visible in
Section 5.
Remark 1. Assume that the interest rate is deterministic and that the drift term in the dynamics of the asset and the claim processes are linear in the underlying and the value process in the sense that the functions g, ϕ and Φ are in the formfor deterministic functions and , and . Then the value process is given byand the intrinsic value of the value process is given byfor functions and that solve a system of ordinary differential equations. Hence, in the case with a deterministic interest rate and full linearity,and the time value of the value process is equal to zero. See Chapter 3 in [14] for the derivation of the system of ordinary differential equations for and . Appendix A investigates the quality of the intrinsic value approximation for
.
3.2. Calculation of the Intrinsic Value
In this section, we solve the forward–backward element by an iteration in a deterministic as-if market. We study how to calculate the intrinsic value of the underlying and the intrinsic value of the value process. From Definition 1, we see that in order to calculate
, we must solve the following system of differential equations
The intrinsic value of the underlying and the intrinsic value of the value process satisfy a deterministic forward–backward system of ordinary differential equations given by (
7). We propose two iteration methods to solve the forward–backward system of ordinary differential equations. The starting point of both methods is to suppress the entanglement of
S and
V that prevents us from solving the system of differential equations. The iteration procedures are performed in the hypothetical market set up at fixed time
and are measurable with respect to
, thus the price process of the asset
S, the interest rate
r, and the price of the process of the zero coupon bond
are known up to and including time
t.
The first method is a perturbation argument, where the forward–backward nature of the equations is preserved but the equations are decoupled. The second method is a shooting method where the boundary conditions are modified but we preserve a system of coupled equations. In both methods, the modification takes place in the first iteration to trigger the iteration procedure. We describe the first and the
kth iteration for
in both methods. The objective of both methods is to solve the system of differential equations in Equation (
7) in order to calculate the function
.
3.2.1. Method I: Perturbation Method
The modification in the perturbation argument is a substitution in the differential equation of
in Equation (
7), where we substitute the unknown
with a known function, which is measurable with respect to
. We denote the function
.
Iteration 1
In the first iteration, the intrinsic value of the stock index satisfies the differential equation
and the intrinsic value of the value process satisfies the differential equation
This is a solvable system of differential equations. In the numerical study in
Section 5, we choose
.
Iteration k
We use the fact that we know the intrinsic value of the value process from the previous iteration and insert this into the differential equation of
. The intrinsic value of the stock index satisfies the differential equation
The intrinsic value of the value process satisfies the differential equation
This is a solvable system of differential equations.
Stopping Criteria
We suggest the stopping criteria
for
. Another criteria is to fix the number of iterations. Let
be the resulting number of iterations. With the perturbation method, we estimate the solution to the system of the differential equations given by Equation (
7), and the resulting estimate of the intrinsic value of the value process is
3.2.2. Method II: Shooting Method
The modification in the shooting method is the assumption that we know the boundary condition at time
t in the differential equation of the intrinsic value of the value process in Equation (
7). We assume that
for a known function
, which is measurable with respect to
. In the numerical study in
Section 5, we choose
.
Iteration 1
We solve the following system of forward differential equations
This is a solvable system of differential equations.
If we solve the differential equations from Equation (
7) with the boundary condition in Equation (
8), we obtain
The boundary condition in Equation (
7) states that
The difference
is an estimate of how wrong our assumption is that
. We use the estimate to adjust the boundary condition of the intrinsic value of the value process at time
t in the next iteration, such that we, in the second iteration, assume that
which is the solution to the differential equation of
from Equation (
7) with the boundary condition
.
Iteration k
In the
kth iteration, we assume that
We solve the forward system of differential equations with the boundary condition above
Hopefully, we have that
such that we in the
kth iteration are closer to the true value of the intrinsic value of the value process at time
T than in the previous iteration.
Stopping Criteria
We suggest the stopping criteria
for
. Another criteria is to fix the number of iterations. Let
be the resulting number of iterations. The resulting estimate of the intrinsic value of the value process is