Variance gamma process
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In the theory of stochastic processes, a part of the mathematical
theory of probability Probability theory is the branch of mathematics concerned with probability. Although there are several different probability interpretations, probability theory treats the concept in a rigorous mathematical manner by expressing it through a set o ...
, the variance gamma process (VG), also known as Laplace motion, is a
Lévy process In probability theory, a Lévy process, named after the French mathematician Paul Lévy, is a stochastic process with independent, stationary increments: it represents the motion of a point whose successive displacements are random, in which disp ...
determined by a random time change. The process has finite moments distinguishing it from many Lévy processes. There is no
diffusion Diffusion is the net movement of anything (for example, atoms, ions, molecules, energy) generally from a region of higher concentration to a region of lower concentration. Diffusion is driven by a gradient in Gibbs free energy or chemica ...
component in the VG process and it is thus a pure jump process. The increments are independent and follow a variance-gamma distribution, which is a generalization of the Laplace distribution. There are several representations of the VG process that relate it to other processes. It can for example be written as a
Brownian motion Brownian motion, or pedesis (from grc, πήδησις "leaping"), is the random motion of particles suspended in a medium (a liquid or a gas). This pattern of motion typically consists of random fluctuations in a particle's position insi ...
W(t) with drift \theta t subjected to a random time change which follows a
gamma process In mathematics and probability theory, a gamma process, also known as (Moran-)Gamma subordinator, is a random process with independent gamma distributed increments. Often written as \Gamma(t;\gamma,\lambda), it is a pure-jump increasing Lévy ...
\Gamma(t; 1, \nu) (equivalently one finds in literature the notation \Gamma(t;\gamma=1/\nu,\lambda=1/\nu)): : X^(t; \sigma, \nu, \theta) \;:=\; \theta \,\Gamma(t; 1, \nu) + \sigma\,W(\Gamma(t; 1, \nu)) \quad. An alternative way of stating this is that the variance gamma process is a Brownian motion subordinated to a gamma subordinator. Since the VG process is of finite variation it can be written as the difference of two independent gamma processes: : X^(t; \sigma, \nu, \theta) \;:=\; \Gamma(t; \mu_p, \mu_p^2\,\nu) - \Gamma(t; \mu_q, \mu_q^2\,\nu) where : \mu_p := \frac\sqrt + \frac \quad\quad\text\quad\quad \mu_q := \frac\sqrt - \frac \quad. Alternatively it can be approximated by a
compound Poisson process A compound Poisson process is a continuous-time (random) stochastic process with jumps. The jumps arrive randomly according to a Poisson process and the size of the jumps is also random, with a specified probability distribution. A compound Poisso ...
that leads to a representation with explicitly given (independent) jumps and their locations. This last characterization gives an understanding of the structure of the sample path with location and sizes of jumps. On the early history of the variance-gamma process see Seneta (2000).


Moments

The mean of a variance gamma process is independent of \sigma and \nu and is given by :E (t)= \theta t The variance is given as :Var (t)= (\theta^2 \nu + \sigma^2)t The 3rd central moment is :E X(t)_-_E[X(t)^3.html" ;"title="(t).html" ;"title="X(t) - E[X(t)">X(t) - E[X(t)^3">(t).html" ;"title="X(t) - E[X(t)">X(t) - E[X(t)^3= (2 \theta^3 \nu^2 + 3 \sigma^2 \theta \nu)t The 4th central moment is :E X(t) - E[X(t)^4] = (3 \sigma^4 \nu + 12 \sigma^2 \theta^2 \nu^2 + 6 \theta^4 \nu^3)t + (3 \sigma^4 + 6 \sigma^2 \theta^2 \nu + 3 \theta^4 \nu^2)t^2


Option pricing

The VG process can be advantageous to use when pricing options since it allows for a wider modeling of
skewness In probability theory and statistics, skewness is a measure of the asymmetry of the probability distribution of a real-valued random variable about its mean. The skewness value can be positive, zero, negative, or undefined. For a unimodal ...
and
kurtosis In probability theory and statistics, kurtosis (from el, κυρτός, ''kyrtos'' or ''kurtos'', meaning "curved, arching") is a measure of the "tailedness" of the probability distribution of a real-valued random variable. Like skewness, kurt ...
than the
Brownian motion Brownian motion, or pedesis (from grc, πήδησις "leaping"), is the random motion of particles suspended in a medium (a liquid or a gas). This pattern of motion typically consists of random fluctuations in a particle's position insi ...
does. As such the variance gamma model allows to consistently price options with different strikes and maturities using a single set of parameters. Madan and Seneta present a symmetric version of the variance gamma process. Madan, Carr and Chang extend the model to allow for an asymmetric form and present a formula to price
European option In finance, the style or family of an option is the class into which the option falls, usually defined by the dates on which the option may be exercised. The vast majority of options are either European or American (style) options. These options ...
s under the variance gamma process. Hirsa and Madan show how to price
American option In finance, the style or family of an option (finance), option is the class into which the option falls, usually defined by the dates on which the option may be Exercise (options), exercised. The vast majority of options are either European or Amer ...
s under variance gamma. Fiorani presents numerical solutions for European and American barrier options under variance gamma process. He also provides computer code to price vanilla and barrier European and American barrier options under variance gamma process. Lemmens et al. construct bounds for arithmetic
Asian option An Asian option (or ''average value'' option) is a special type of option contract. For Asian options the payoff is determined by the average underlying price over some pre-set period of time. This is different from the case of the usual European o ...
s for several Lévy models including the variance gamma model.


Applications to credit risk modeling

The variance gamma process has been successfully applied in the modeling of
credit risk A credit risk is risk of default on a debt that may arise from a borrower failing to make required payments. In the first resort, the risk is that of the lender and includes lost principal and interest, disruption to cash flows, and increased ...
in structural models. The pure jump nature of the process and the possibility to control skewness and kurtosis of the distribution allow the model to price correctly the risk of default of securities having a short maturity, something that is generally not possible with structural models in which the underlying assets follow a Brownian motion. Fiorani, Luciano and Semeraro model
credit default swap A credit default swap (CDS) is a financial swap agreement that the seller of the CDS will compensate the buyer in the event of a debt default (by the debtor) or other credit event. That is, the seller of the CDS insures the buyer against som ...
s under variance gamma. In an extensive empirical test they show the overperformance of the pricing under variance gamma, compared to alternative models presented in literature.


Simulation

Monte Carlo methods for the variance gamma process are described by Fu (2000). Algorithms are presented by Korn et al. (2010). (Section 7.3.3)


Simulating VG as gamma time-changed Brownian motion

*Input: VG parameters \theta, \sigma, \nu and time increments \Delta t_1,\dots, \Delta t_N, where \sum_^N \Delta t_i = T. *Initialization: Set ''X''(0) = 0. *Loop: For ''i'' = 1 to ''N'': # Generate independent gamma \Delta\, G_i \,\sim \Gamma (\Delta t_i/\nu, \nu), and normal Z_i \sim \mathcal(0, 1) variates, independently of past random variates. # Return X(t_i) = X(t_) + \theta \,\Delta G_i + \sigma \sqrtZ_i.


Simulating VG as difference of gammas

This approach is based on the difference of gamma representation X^(t; \sigma, \nu, \theta) \;=\; \Gamma(t; \mu_p, \mu_p^2\,\nu) - \Gamma(t; \mu_q, \mu_q^2\,\nu), where \mu_p, \mu_q, \nu are defined as above. *Input: VG parameters \theta, \sigma, \nu, \mu_p, \mu_q ] and time increments \Delta t_1,\dots, \Delta t_N, where \sum_^N \Delta t_i = T. *Initialization: Set ''X''(0) = 0. *Loop: For ''i'' = 1 to ''N'': # Generate independent gamma variates \gamma_i^ \, \sim \, \Gamma(\Delta t_i/\nu,\nu \mu_q), \quad \gamma_i^ \, \sim \, \Gamma(\Delta t_i / \nu, \nu \mu_p), independently of past random variates. # Return X(t_i) = X(t_) + \Gamma^+_i(t) - \Gamma^-_i(t).


Simulating a VG path by difference of gamma bridge sampling

To be continued ...


Variance gamma as 2-EPT distribution

Under the restriction that \frac is integer the variance gamma distribution can be represented as a 2-EPT probability density function. Under this assumption it is possible to derive closed form vanilla option prices and their associated
Greeks The Greeks or Hellenes (; el, Έλληνες, ''Éllines'' ) are an ethnic group and nation indigenous to the Eastern Mediterranean and the Black Sea regions, namely Greece, Cyprus, Albania, Italy, Turkey, Egypt, and, to a lesser extent, oth ...
. For a comprehensive description see.Sexton, C. and Hanzon,B.,"State Space Calculations for two-sided EPT Densities with Financial Modelling Applications", ''www.2-ept.com''


References

{{Stochastic processes Lévy processes Pierre-Simon Laplace