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In
mathematical finance Mathematical finance, also known as quantitative finance and financial mathematics, is a field of applied mathematics, concerned with mathematical modeling of financial markets. In general, there exist two separate branches of finance that require ...
, the SABR model is a
stochastic volatility In statistics, stochastic volatility models are those in which the variance of a stochastic process is itself randomly distributed. They are used in the field of mathematical finance to evaluate derivative securities, such as options. The name d ...
model, which attempts to capture the
volatility smile Volatility smiles are implied volatility patterns that arise in pricing financial options. It is a parameter (implied volatility) that is needed to be modified for the Black–Scholes formula to fit market prices. In particular for a given expi ...
in derivatives markets. The name stands for "
stochastic Stochastic (, ) refers to the property of being well described by a random probability distribution. Although stochasticity and randomness are distinct in that the former refers to a modeling approach and the latter refers to phenomena themselv ...
alpha Alpha (uppercase , lowercase ; grc, ἄλφα, ''álpha'', or ell, άλφα, álfa) is the first letter of the Greek alphabet. In the system of Greek numerals, it has a value of one. Alpha is derived from the Phoenician letter aleph , whi ...
,
beta Beta (, ; uppercase , lowercase , or cursive ; grc, βῆτα, bē̂ta or ell, βήτα, víta) is the second letter of the Greek alphabet. In the system of Greek numerals, it has a value of 2. In Modern Greek, it represents the voiced labiod ...
,
rho Rho (uppercase Ρ, lowercase ρ or ; el, ρο or el, ρω, label=none) is the 17th letter of the Greek alphabet. In the system of Greek numerals it has a value of 100. It is derived from Phoenician letter res . Its uppercase form uses the sa ...
", referring to the parameters of the model. The SABR model is widely used by practitioners in the financial industry, especially in the
interest rate derivative In finance, an interest rate derivative (IRD) is a derivative whose payments are determined through calculation techniques where the underlying benchmark product is an interest rate, or set of different interest rates. There are a multitude of diff ...
markets. It was developed by Patrick S. Hagan, Deep Kumar, Andrew Lesniewski, and Diana Woodward.


Dynamics

The SABR model describes a single forward F, such as a
LIBOR The London Inter-Bank Offered Rate is an interest-rate average calculated from estimates submitted by the leading banks in London. Each bank estimates what it would be charged were it to borrow from other banks. The resulting average rate is u ...
forward rate The forward rate is the future yield on a bond. It is calculated using the yield curve. For example, the yield on a three-month Treasury bill six months from now is a ''forward rate''.. Forward rate calculation To extract the forward rate, we n ...
, a forward swap rate, or a forward stock price. This is one of the standards in market used by market participants to quote volatilities. The volatility of the forward F is described by a parameter \sigma. SABR is a dynamic model in which both F and \sigma are represented by stochastic state variables whose time evolution is given by the following system of
stochastic differential equations A stochastic differential equation (SDE) is a differential equation in which one or more of the terms is a stochastic process, resulting in a solution which is also a stochastic process. SDEs are used to model various phenomena such as stock pr ...
: :dF_t=\sigma_t \left(F_t\right)^\beta\, dW_t, :d\sigma_t=\alpha\sigma^_t\, dZ_t, with the prescribed time zero (currently observed) values F_0 and \sigma_0. Here, W_t and Z_t are two correlated
Wiener process In mathematics, the Wiener process is a real-valued continuous-time stochastic process named in honor of American mathematician Norbert Wiener for his investigations on the mathematical properties of the one-dimensional Brownian motion. It is ...
es with correlation coefficient -1<\rho<1: :dW_t \, dZ_t = \rho \, dt The constant parameters \beta,\;\alpha satisfy the conditions 0\leq\beta\leq 1,\;\alpha\geq 0. \alpha is a volatility-like parameter for the volatility. \rho is the instantaneous correlation between the underlying and its volatility. \alpha thus controls the height of the ATM implied volatility level. The correlation \rho controls the slope of the implied skew and \beta controls its curvature. The above dynamics is a stochastic version of the CEV model with the ''skewness'' parameter \beta: in fact, it reduces to the CEV model if \alpha=0 The parameter \alpha is often referred to as the ''volvol'', and its meaning is that of the lognormal volatility of the volatility parameter \sigma.


Asymptotic solution

We consider a
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� ...
(say, a call) on the forward F struck at K, which expires T years from now. The value of this option is equal to the suitably discounted expected value of the payoff \max(F_T-K,\;0) under the probability distribution of the process F_t. Except for the special cases of \beta=0 and \beta=1, no closed form expression for this probability distribution is known. The general case can be solved approximately by means of an
asymptotic expansion In mathematics, an asymptotic expansion, asymptotic series or Poincaré expansion (after Henri Poincaré) is a formal series of functions which has the property that truncating the series after a finite number of terms provides an approximation to ...
in the parameter \varepsilon=T\alpha^2. Under typical market conditions, this parameter is small and the approximate solution is actually quite accurate. Also significantly, this solution has a rather simple functional form, is very easy to implement in computer code, and lends itself well to risk management of large portfolios of options in real time. It is convenient to express the solution in terms of the
implied volatility In financial mathematics, the implied volatility (IV) of an option contract is that value of the volatility of the underlying instrument which, when input in an option pricing model (such as Black–Scholes), will return a theoretical value equ ...
\sigma_ of the option. Namely, we force the SABR model price of the option into the form of the Black model valuation formula. Then the implied volatility, which is the value of the lognormal volatility parameter in Black's model that forces it to match the SABR price, is approximately given by: : \sigma_\text=\alpha\; \frac\; \left\, where, for clarity, we have set C\left(F\right)=F^\beta. The value F_ denotes a conveniently chosen midpoint between F_0 and K (such as the geometric average \sqrt or the arithmetic average \left(F_0+K\right)/2). We have also set : \zeta=\frac \alpha \;\int_K^ \frac =\frac \alpha \;\left(F_0^-K^\right), and : \gamma_1=\frac =\frac\;, : \gamma_2=\frac =-\frac\;, The function D\left(\zeta\right) entering the formula above is given by : D(\zeta)=\log\left(\frac\right). Alternatively, one can express the SABR price in terms of the Bachelier's model. Then the implied normal volatility can be asymptotically computed by means of the following expression: : \sigma_^=\alpha\; \frac\; \left\. It is worth noting that the normal SABR implied volatility is generally somewhat more accurate than the lognormal implied volatility. The approximation accuracy and the degree of arbitrage can be further improved if the equivalent volatility under the CEV model with the same \beta is used for pricing options.


SABR for the negative rates

A SABR model extension for negative interest rates that has gained popularity in recent years is the shifted SABR model, where the shifted forward rate is assumed to follow a SABR process :dF_t=\sigma_t (F_t+s)^\beta\, dW_t, :d\sigma_t=\alpha\sigma_t\, dZ_t, for some positive shift s. Since shifts are included in a market quotes, and there is an intuitive soft boundary for how negative rates can become, shifted SABR has become market best practice to accommodate negative rates. The SABR model can also be modified to cover negative interest rates by: :dF_t=\sigma_t , F_t, ^\beta\, dW_t, :d\sigma_t=\alpha\sigma_t\, dZ_t, for 0\leq\beta\leq 1/2 and a free boundary condition for F=0. Its exact solution for the zero correlation as well as an efficient approximation for a general case are available. An obvious drawback of this approach is the a priori assumption of potential highly negative interest rates via the free boundary.


Arbitrage problem in the implied volatility formula

Although the asymptotic solution is very easy to implement, the density implied by the approximation is not always arbitrage-free, especially not for very low strikes (it becomes negative or the density does not integrate to one). One possibility to "fix" the formula is use the stochastic collocation method and to project the corresponding implied, ill-posed, model on a polynomial of an arbitrage-free variables, e.g. normal. This will guarantee equality in probability at the collocation points while the generated density is arbitrage-free. Using the projection method analytic European option prices are available and the implied volatilities stay very close to those initially obtained by the asymptotic formula. Another possibility is to rely on a fast and robust PDE solver on an equivalent expansion of the forward PDE, that preserves numerically the zero-th and first moment, thus guaranteeing the absence of arbitrage.


Extensions

The SABR model can be extended by assuming its parameters to be time-dependent. This however complicates the calibration procedure. An advanced calibration method of the time-dependent SABR model is based on so-called "effective parameters". Alternatively, Guerrero and Orlando show that a time-dependent local stochastic volatility (SLV) model can be reduced to a system of autonomous PDEs that can be solved using the heat kernel, by means of the Wei-Norman factorization method and Lie algebraic techniques. Explicit solutions obtained by said techniques are comparable to traditional Monte Carlo simulations allowing for shorter time in numerical computations.


Simulation

As the stochastic volatility process follows a
geometric Brownian motion A geometric Brownian motion (GBM) (also known as exponential Brownian motion) is a continuous-time stochastic process in which the logarithm of the randomly varying quantity follows a Brownian motion (also called a Wiener process) with drift. It i ...
, its exact simulation is straightforward. However, the simulation of the forward asset process is not a trivial task. Taylor-based simulation schemes are typically considered, like Euler–Maruyama or Milstein. Recently, novel methods have been proposed for the ''almost exact'' Monte Carlo simulation of the SABR model. Extensive studies for SABR model have recently been considered. For the normal SABR model (\beta=0 with no boundary condition at F=0), a closed-form simulation method is known.


See also

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Volatility (finance) In finance, volatility (usually denoted by ''σ'') is the degree of variation of a trading price series over time, usually measured by the standard deviation of logarithmic returns. Historic volatility measures a time series of past market pric ...
*
Stochastic volatility In statistics, stochastic volatility models are those in which the variance of a stochastic process is itself randomly distributed. They are used in the field of mathematical finance to evaluate derivative securities, such as options. The name d ...
*
Risk-neutral measure In mathematical finance, a risk-neutral measure (also called an equilibrium measure, or '' equivalent martingale measure'') is a probability measure such that each share price is exactly equal to the discounted expectation of the share price u ...


References


Further reading

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Press Release
New York, NY – June 24, 2019 * {{Stochastic processes, state=collapsed Derivatives (finance) Financial models Options (finance)