Operators and Boundary Problems in Finance, Economics and Insurance: Peculiarities, Efficient Methods and Outstanding Problems
Abstract
:1. Introduction
1.1. Expectations and Boundary Problems
1.2. Black–Scholes Model and Diffusion Models
1.3. The Case of Jump-Diffusions
- (1)
- To prove the existence and uniqueness of the solution in the class of sufficiently regular functions; sufficiently regular means that Dynkin’s formula (5) is valid;
- (2)
1.4. Structure of This Paper
2. Lévy Models or PDO with Constant Symbols
2.1. Lévy Processes
2.2. Examples of Lévy Processes on
2.3. Examples of Lévy Processes on
2.4. General Remarks
- Stable Lévy processes can be characterized as the limiting case of SINH-regular processes when the tube domain of analyticity shrinks to ; the conditions are valid in only. The calculation of expectations in stable Lévy models can be efficiently performed by either modifying the sinh-acceleration technique or approximating stable Lévy processes with SINH-regular ones [8,9].
- The definition in [31] allows for to be adjacent to , and Definition 1 can be generalized in a similar fashion.
- It is easy to see that NTS processes are SINH-regular but a multi-factor KoBoL X is SINH-regular only if X is a mixture of independent KoBoL in 1D.
- VGP and their multi-factor generalizations are SINH-regular if we replace the weight with .
- As in [31], more general weight functions can be used. It can be shown that, in the case of pure jump processes, as ; hence, one can use the upper bound with in all cases.
- If , then is an elliptic symbol. If , then, typically, , hence, is hypo-elliptic.
- If in the representation (26), , and , then the principal symbol of is , which leads to the irregularity of the Wiener–Hopf factors and the solutions of the boundary problems.
- In the case of Cauchy problems in the whole space, the drift can be eliminated by the change of variables , and the same change of variables is implicit in efficient numerical methods for the Fourier inversion methods based on the conformal deformation of lines and hyperplanes of integration. Formally, the same change of variables can be applied in the case of more general boundary problems but the change makes a flat boundary (typical in pricing problems for standard barrier options) non-flat. When the boundary is flat, explicit pricing formulas can be derived and the study of the (ir)regularity of the solutions simplified.
3. Pricing European Options in Lévy Models and Cauchy Problems in for Operators with Constant Symbols
3.1. Exact Formulas
3.2. Efficient Numerical Realizations in 1D Case
3.3. Stable Lévy Processes and Fractional Differential Operators
3.4. Calculation of Probability Distributions and Expectations (Prices) in Multi-Factor Lévy Models and Solution of the Cauchy Problems in
4. Barrier Options in Lévy Models, and Boundary Problems for PDO with Constant Symbols
4.1. Main Notation
- X: a Lévy process on ;
- : the filtered measure space generated by X;
- : the set of all stopping times with respect to the filtration ;
- : an EMM chosen for pricing;
- : the characteristic exponent of X;
- h, , : barriers;
- and : first entrance time by X into and , respectively;
- : the discount rate;
- The (expected) present value of the perpetual stream which is lost at time :
- The (expected) present value of the perpetual stream which is lost at time :
- the (expected present) value of the perpetual stream which is lost at :
- : exponentially distributed random variable of mean , independent of X;
- and —the supremum and infimum processes (defined pathwise, a.s.);
- Normalized EPV operators (normalized resolvents) under X, , and calculate the (normalized) expected present value of the streams under and :
- Wiener–Hopf factors: ,
- (1)
- (resp., ) admits (uniformly bounded) analytic continuation to the upper (resp., lower) half-plane.
- (2)
- The EPV operators act in . If , then . If , then .
- (3)
- , , . If there exist , , such that:
- (a)
- admits (uniformly bounded) analytic continuation to the strip (meaning: analytic in the interior and continuous up to the boundary);
- (b)
- admits analytic continuation to the half-plane ;
- (c)
- admits analytic continuation to the half-plane ;
- (d)
- the action of the EPV operators extends to and Sobolev spaces with exponential weights.
4.2. Wiener–Hopf Factorization
- (a)
- the random variables and are independent; and
- (b)
- the random variables and are identical in law.
4.3. Single Barrier Options
4.4. Numerical Realizations
- (I)
- There exist such that:
- (II)
- The Wiener–Hopf factor admits analytic continuation to the half-plane , and can be calculated as follows—for any :
- (III)
- The Wiener–Hopf factor admits analytic continuation to the half-plane , and can be calculated as follows—for any :
4.5. Double Barrier Options
4.6. Regularity of Solutions of Boundary Problems
- (a)
- If or and , then are elliptic symbols of order ;
- (b)
- If , then are elliptic symbols of order , where depend on , and ;
- (c)
- If and , then and , where are of order , for any . Hence, , and ;
- (d)
- If and , then and , where are of order , for any . Hence, , and .
4.7. The Case of Time-Dependent Boundaries
4.8. Multi-Factor Case
5. American Options and Free Boundary Problems
5.1. Basic Example
5.2. Behavior of the Early Exercise Boundary near Maturity
- 1.
- For x in the out-of-the-money region, :
- 2.
- For x in the in-the-money region :
5.3. Perpetual American Options in One-Factor Models or Stationary Free Boundary Problems on
- (i)
- X is a Lévy process with the non-trivial infimum process;
- (ii)
- g is a non-decreasing stream that changes sign;
- (iii)
- (a)
- There exists h such that:
- (b)
- , the entry time into , is an optimal exit time in class .
- (c)
- The option value can be represented as the EPV of the stream , where U is a non-decreasing function vanishing above h.
- (d)
- If g is not monotone but (i) holds, then is an optimal exit time in the class of stopping times of the threshold type.
5.4. Good and Bad News Principles and the Failure of the Smooth Pasting Condition
5.5. American Options with Finite Time Horizon or Non-Stationary Boundary Problems on
- Set (the payoff at maturity).
- In the cycle , find as the solution to the optimal stopping problem:
- is Carr’s randomization approximation to time-0 option price.
5.6. Shape of the Early Exercise Boundary and Smooth Pasting Condition
6. Barrier Options and American Options in Regime-Switching Lévy Models and Systems of Pseudo-Differential Equations, Approximation of Stochastic Volatility Models and Models with Stochastic Interest Rate
- (i)
- satisfies the (ACP)-property (needed in the case of American options only);
- (ii)
- is measurable, non-negative, and does not grow too fast at infinity;
- (iiii)
- is continuous, monotone, and does not grow too fast at infinity.
- (iv)
- I.
- Reduce the pricing problem to the problem of evaluation of a perpetual stream (in different states, the payoff streams are different).
- II.
- Assuming that the value functions in each state but state j are known, calculate the state-j option value.
- III.
- In the case of American options, calculate the approximation to the early exercise boundary in state j.
- IV.
- Using this conditional result as a guide, construct an iteration scheme for all states, and prove that the value functions converge to some limits.
- Choose the grid (it might be necessary to use different grids in different states).
- In the cycle , calculate the initial approximation to the option value:
- In the cycle for each , calculate:Stop when , where is the error tolerance.
7. Affine and Quadratic Term Structure Models
7.1. Affine Processes
- (1)
- The characteristic function of the transition density is of the form of an exponential function of an affine function of factors of the models with the coefficients depending on time to maturity and spectral parameter :
- (2)
- The coefficients of the stochastic differential equation (SDE) defining the process are affine functions of the state variable.
- Prove the equivalence of (1) and (2) in the general case or for as wide a class of SDE with affine coefficients as possible. The difficulty stems, in particular, from the fact that the state space is of the form , the infinitesimal generator degenerates at the boundary and the term of order 0 (“electric potential”) is an bounded affine function;
- Prove the Feynman–Kac theorem for the (backward) Cauchy problem and more general boundary problems.
- Derive general conditions for the explosion of the solution of the boundary problem (81) and (82) as .
- Study the asymptotics of the solution of the (backward) Cauchy problem with the terminal condition , as . For partial results based on the eigenfunction expansion technique, see [90,91,92,93]. The main block is the generalized eigenfunction expansion of the essentially non-self-adjoint quadratic Hamiltonian. This is a special case of the same procedure in quadratic term structure models [91].
7.2. Wishart Models
7.3. Quadratic Term Structure Models (QTSM)
7.4. Systems of Affine and Quadratic Term Structure Models
8. Conclusions
- In models with jumps, boundary conditions are non-local, whereas the standard boundary and co-boundary problems for PDE, PDO and fractional differential equations are local. See, e.g., [3,4,96,97]. Therefore, (1) one of the standard approaches to boundary problems, namely reduction to the boundary, cannot be used to reduce the dimension of the problem; (2) numerical methods which do not take the non-locality of the boundary conditions into account properly produce sizable errors; if the time horizon is large, the relative errors are, typically, very large.
- In popular pure diffusion models such as the Heston model, the operator degenerates at the boundary. The degeneration is sufficiently regular so that the generalization of the Boutet de Monvel calculus for degenerate elliptic operators [3] is applicable in a number of situations (interestingly, the infinitesimal generator in the Heston model is one of the basic examples in [3]). Formally, one can apply this calculus to boundary problems in models with jumps provided that the characteristic exponent of the jump part is a rational function. However, such an application would require the approximation of non-local boundary conditions by local ones. For a reduction to the boundary in applications to the Heston model and other basic diffusion models, see [98] and the bibliography therein.
- The degeneration and non-locality of the infinitesimal generators are the sources of fundamental difficulties for a rigorous proof of the Feynman–Kac theorem. One must establish certain regularity conditions of the solution for the proof. For applications of Dynkin’s formula, conditions are weaker than for applications of Ito’s formula, and, in some cases, general regularity results [3,5] can be used. However, the author is unaware of any general proof.
- In the case of Lévy models (PDO with constant symbols) and problems with flat boundaries, the probabilistic version of the Wiener–Hopf factorization technique can be used to derive an explicit formula for the price in the form of oscillatory integrals, and the analytic form of the same technique used to derive the same formula for the unique solution of the corresponding boundary problem thereby proving the Feynman–Kac theorem. In the case of problems with a curved boundary, the general regularity results and the proof of the Feynman–Kac theorem are unknown.
- The proof and study of regularity are especially non-trivial if the infinitesimal operator of a Lévy model is an elliptic PDO of order . Models of this kind are documented in the majority of empirical studies (if Lévy models are calibrated to the real data). We outlined approaches to study general boundary problems with operators of the form .
- In popular Lévy models, the solutions of the boundary problems are irregular at the boundary, hence numerical methods that (implicitly or explicitly) assume that the solution is more smooth than it is inevitably produce large errors.
- If the infinitesimal operator of a Lévy model is an elliptic PDO of order , then the smooth pasting principle for free boundary may fail.
- In many cases, the free boundary is discontinuous at the terminal date, which implies that a numerical method that assumes the continuity is bound to be inaccurate.
- The interpretation of operators in the operator form from the Wiener–Hopf factorization as expectation operators under supremum and infimum processes, and explicit formulas for solutions of basic boundary problems under very mild restrictions on operators and boundary conditions, in the case of flat boundaries.
- The interpretation allows one to prove the convergence of general algorithms for pricing options:
- (a)
- With finite time horizon (stationary boundary problems) using maturity randomization (method of lines);
- (b)
- In regime-switching models;
- (c)
- Approximations of models with a stochastic interest rate and stochastic volatility by regime-switching models (systems of boundary problems);
- (d)
- Options with non-monotone and discontinuous payoffs, with applications to game-theoretical problems.
- In the interest of brevity, the refined version of the fast Fourier transform (FFT) and inverse Fourier transform (iFFT) introduced in [46,69] to price single and barrier options in Lévy models is not described in the paper. The refined version can be used to accurately evaluate options of various kinds. The advantage of refined FFT and iFFT as compared to existing versions, including the fractional FFT, stems from the flexibility of choices of grids of different length in the dual and state spaces, in each block of the numerical procedure. The final result is calculated using an almost optimal number of the standard FFT and iFFT blocks of the same (smaller) size.
- Instead, in the paper, we describe very fast and accurate methods for the numerical evaluation of integrals, in dimensions 1–4, based on the conformal deformation technique. The main idea is close to the idea of the saddle point method but the families of the contour deformations that we use allow one to relatively easily construct deformations with respect to several variables. The joint deformation of several contours above can be regarded as a further step in the realization of a general program of study of the efficiency of combinations of one-dimensional inverse transforms for high-dimensional inversions outlined in [99,100] with additional twists: the calculation of the Wiener–Hopf factors, which is necessary to price lookback and barrier options. The authors of [99,100] consider three main different one-dimensional algorithms for the numerical realization of the Bromwich integral (i) Fourier series expansions with the Euler summation; (ii) combinations of Gaver functionals; and (iii) deformation of the contour in the Bromwich integral, and discuss various methods of multi-dimensional inversion based on combinations of these three basic blocks. Our results imply that, for the purposes of multi-dimensional inversion, the class of deformations must be enlarged. In particular, in some practically important situations, deformations close to the steepest descent such as Talbot’s deformation [101] are not applicable, and one must resort to seemingly less efficient deformations. Note that the general conformal deformation technique that we develop is especially efficient in the case of highly oscillatory integrals.
- “The Hilbert transform method” is used in backward induction procedures to price options of several types. Calculations are in the dual space. At each time step, operators of the form and are expressed in terms of the Hilbert transform, and the latter is realized using the fast Hilbert transform. See [102,103,104] and the bibliographies therein. In these papers and other papers where the fast Hilbert transform is used, the grids of the same length in the state and dual spaces are used, which is presented as an advantage of the fast Hilbert transform approach. However, in many cases, the choice of grids of equal size leads to either very large errors or unnecessarily long grids and a large CPU time. See [46] for details and the explanation on how to use grids of various length in order to efficiently control discretization and truncation errors. Efficient methods of the numerical Fourier inversion described in the paper can be adjusted to the Hilbert transform. See [10] for an efficient numerical realization of operators and , applicable when these operators are applied only once. For an efficient numerical realization of operators generalizing the Hilbert transform, which is applicable in backward induction procedures (double spiral method), see [105].
- Variations of the straightforward application of the Fourier and inverse Fourier transform to European options, equivalently, the solution of Cauchy problems for parabolic PDO on the real line, namely, COS method and Carr–Madan method mentioned in Section 3.2, introduce additional unnecessary errors. The so-called Lewis–Lipton formula is the standard Fourier inversion formula with the prefixed line of integration. The choice of the line is non-optimal in the majority of cases; the conformal deformation method is much faster and more accurate. See [2] for numerical examples.
- In the CONV method [106,107], at each step of backward induction, an extremely inefficient interpolation procedure for the approximation of the value function at each time step is applied. In probabilistic terms, continuous distributions are approximated by discrete distributions supported on a uniform grid, a dual grid is chosen, and the calculations at each time step are reduced to the composition of FFT, multiplication by the array of values of the characteristic function, and iFFT. The procedure is simple but the errors are large. See [46] for the detailed analysis.
- The COS method is applicable (and has been applied) to price options of various kind. The essence of the method is an approximation of the kernel of the transition operator by a linear combination of cosines (hence the name). I find it difficult to find a sound mathematical argument in favor of this approximation. On the contrary, it is possible to indicate additional sources of errors and produce examples which demonstrate the inefficiency of COS. In backward induction procedures, the errors of COS accumulate very quickly, and pricing barrier options with even a moderate time horizon (0.5Y) is, essentially, impossible. See numerical examples in [2,13,14,16,17,18,19,20,31].
- In the PROJ method, the transition density of a random variable (equivalently, the kernel of the transition operator) is projected on a B-spline basis. See [20] for the bibliography, the discussion about the relative efficiency of COS, PROJ, the method in [46] which does not use an approximation of the transition kernel, and for an efficient procedure for the calculation of the projection coefficients using the sinh-acceleration. Note that the error of the approximation of the transition kernel is in the -norm; hence, if the transition density has large derivatives or is non-smooth at the origin, which is the case of the VG model and Lévy models of order close to 0, then the errors of PRPJ can be very large.
- Approximations of value functions at each time step and filtering. In [16,20,46,69] (see also the bibliographies therein), the value function at each time step is approximated by piece-wise polynomials. In view of the irregularity of value functions near the boundary discussed in the paper, such an approximation introduces an error which can be controlled. See [16,60]. The approximation can be interpreted as a spectral filter, which is used in a number of publications to increase the speed of convergence. In [108], ad hoc spectral filters are used to increase the convergence of the integrals: “When Fourier techniques are employed to specific option pricing cases from computational finance with non-smooth functions, the so-called Gibbs phenomenon may become apparent. This seriously impacts the efficiency and accuracy of the pricing. For example, the Variance Gamma asset price process gives rise to algebraically decaying Fourier coefficients, resulting in a slowly converging Fourier series. We apply spectral filters to achieve faster convergence. Filtering is carried out in Fourier space; the series coefficients are pre-multiplied by a decreasing filter, which does not add significant computational cost. Tests with different filters show how the algebraic index of convergence is improved.” The quoted statement is correct. However, spectral filters are designed to regularize the results. The regularization of value functions results in serious errors in regions of paramount importance for risk management: near barrier and strike, close to maturity and for long dated options. For instance, close to the barrier or default boundary, the value can be overvalued or undervalued manifold. This remark is applicable to the applications of spectral filtering in [109] as well. Note that the conformal deformation technique allows one to eliminate the Gibbs phenomenon without sacrificing accuracy, and at a small CPU cost.
- Approximation of small jumps component by a diffusion. Cont and Volchkova [110] approximated the small jump component by a diffusion. In the result, a PDO of order is replaced with the sum , where is small, and is an integral operator with the kernel of class ; for an accurate approximation, the peak of the kernel has to be very high. After that, a standard implicit–explicit finite difference scheme is used to price barrier options. It is evident that if the infinitesimal generator L is a PDO of order , hence, the derivative of the solution can be unbounded near the boundary, an approximation of L by must lead to sizable errors near the boundary because the solution of the boundary problem becomes smooth up to the boundary. Numerous numerical examples in [111] have demonstrated the inaccuracy of the Cont–Voltchkova method. Note that the methods in [111] resemble but are less efficient than the method in [46,69].
- The approximation of KoBoL and other processes of infinite activity by HEJD model. In [38,40], the author constructed an HEJD model (without a special label attached) whilst keeping in mind to try such an approximation. For pricing American and barrier options, the advantage of HEJD is a simple explicit formula for the Wiener–Hopf factors in the case of positive values of the spectral parameter, derived in [38,40]. Unfortunately, for wide regions in the parameter space and large values of the spectral parameter which arise if a small time step in a backward induction procedure is used, an accurate approximation requires the use of HEJD with very large parameter values and high precision arithmetic is necessary. The reason is the same as in the case of the Cont–Voltchkova method. Due to this inefficiency, the author did not mention approximation of KoBoL by HEJD. Later, such an approximation was used in a number of publications, e.g., [112,113]. For a typical set of parameter values of KoBoL and moderate maturities, such an approximation can be very inaccurate at the distance of up to several percent of barrier. See [46] for numerical examples that illustrate the inefficiency of HEJD approximation. The problem of a large spectral parameter can be partially resolved using Richardson’s extrapolation. In applications to pricing barrier options, the convergence of Richardson’s extrapolation of arbitrary order is proven in [63]. Note that the technique of conformal deformations [10] is more efficient than approximation by HEJD, even in cases when the approximation is reasonably accurate.
- Approximation of underlying jump-diffusions with continuous time Markov chains. In [82,83,84,86], in the models with stochastic interest rates and/or stochastic volatility, the dynamics of additional factors is approximated by continuous time Markov chains. In the PDE language, a part of the infinitesimal generator is discretized; the result is a regime-switching Lévy model. At the first (discretization) step, a Markov chain with the infinite number of states (infinite grid) appears; at the second step, the infinite grid is truncated, and transition rates in a vicinity of the “boundary” of the truncated grid are adjusted so that the Markov chain remains the Markov chain without killing. Thus, the Dirichlet condition must be avoided. In the diffusion case, the adjustment can be interpreted as the discretization of the high contact condition ; in the jump-diffusion case, the “discretized boundary condition” is non-local and more involved. Later, in a number of publications starting with [114], the approximation-by-continuous time Markov chain was used for more general Markov processes in 1D. In some publications, even the dynamics of Lévy factors was approximated by a continuous time Markov chain. Such an approximation is rather inefficient, especially if the tails decay slowly, and/or in the presence of barriers. Furthermore, in related publications, the discretized Dirichlet condition is used, which leads to significant errors of backward induction procedures with many steps.
- Eigenfunction expansion approach. In the case of diffusion models on the real line, there is a significant body of results obtained by V. Linetsky and their students (see, e.g., [115] and the bibliography therein). In [90,91,116], the generalized eigenfunction expansion is derived for solutions of the Cauchy problems in multi-factor models.
- Asymptotic methods. Due to the irregularity of solutions near the boundary, the asymptotic formulas are reasonably accurate only in a rather small vicinity of the boundary [62]: hence, they are rather useless for numerical purposes (although useful for the qualitative analysis). The same is true for asymptotics near maturity (in terms of time to maturity, short time asymptotics). The conformal deformation method can be used to calculate solutions close to maturity with high accuracy. For long time asymptotics, efficient methods can be derived using the eigenfunction expansion technique [92]. Note that there is a large body of the literature devoted to the study of the asymptotics of implied volatility close to maturity and far from maturity.
- For applications of finite elements to option pricing, see [119].
- Approximations based on purely probabilistic methods. The literature is huge. A typical feature is that the convergence of a method is proven without error bounds. A typical example is the Cont–Voltchkova method [110]. The proof of convergence is given; however, as the numerical examples in [111] demonstrate, in many cases, it is necessary to use extremely fine and long grids to satisfy the error tolerance of the order of one percent, at a very large CPU cost.
- Monte-Carlo simulations. The version of the Monte Carlo simulations that is closest to the methods of the present paper is based on the evaluation of the cumulative probability distribution function (cpdf) on an appropriate grid and interpolation. In applications to finance, the idea was used for the first time in [120]. Note that in [120] FFT and in a number of papers since FFT is used. As numerical examples in [31] demonstrate, the evaluation of the cpdf of Lévy processes using FFT leads to inaccurate results. The conformal deformations technique allows one to design much more accurate Monte-Carlo simulation procedures [9,31].
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Levendorskiĭ, S. Operators and Boundary Problems in Finance, Economics and Insurance: Peculiarities, Efficient Methods and Outstanding Problems. Mathematics 2022, 10, 1028. https://doi.org/10.3390/math10071028
Levendorskiĭ S. Operators and Boundary Problems in Finance, Economics and Insurance: Peculiarities, Efficient Methods and Outstanding Problems. Mathematics. 2022; 10(7):1028. https://doi.org/10.3390/math10071028
Chicago/Turabian StyleLevendorskiĭ, Sergei. 2022. "Operators and Boundary Problems in Finance, Economics and Insurance: Peculiarities, Efficient Methods and Outstanding Problems" Mathematics 10, no. 7: 1028. https://doi.org/10.3390/math10071028
APA StyleLevendorskiĭ, S. (2022). Operators and Boundary Problems in Finance, Economics and Insurance: Peculiarities, Efficient Methods and Outstanding Problems. Mathematics, 10(7), 1028. https://doi.org/10.3390/math10071028