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financial mathematics 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 Hull–White model is a
model A model is an informative representation of an object, person or system. The term originally denoted the plans of a building in late 16th-century English, and derived via French and Italian ultimately from Latin ''modulus'', a measure. Models c ...
of future
interest rate An interest rate is the amount of interest due per period, as a proportion of the amount lent, deposited, or borrowed (called the principal sum). The total interest on an amount lent or borrowed depends on the principal sum, the interest rate, th ...
s. In its most generic formulation, it belongs to the class of no-arbitrage models that are able to fit today's term structure of interest rates. It is relatively straightforward to translate the mathematical description of the evolution of future interest rates onto a tree or lattice and so
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 ...
s such as bermudan swaptions can be valued in the model. The first Hull–White model was described by John C. Hull and Alan White in 1990. The model is still popular in the market today.


The model


One-factor model

The model is a
short-rate model A short-rate model, in the context of interest rate derivatives, is a mathematical model that describes the future evolution of interest rates by describing the future evolution of the short rate, usually written r_t \,. The short rate Under a sh ...
. In general, it has the following dynamics: :dr(t) = \left theta(t) - \alpha(t) r(t)\right,dt + \sigma(t)\, dW(t). There is a degree of ambiguity among practitioners about exactly which parameters in the model are time-dependent or what name to apply to the model in each case. The most commonly accepted naming convention is the following: *\theta has ''t'' (time) dependence — the Hull–White model. *\theta and \alpha are both time-dependent — the extended
Vasicek model In finance, the Vasicek model is a mathematical model describing the evolution of interest rates. It is a type of one-factor short-rate model as it describes interest rate movements as driven by only one source of market risk. The model can be us ...
.


Two-factor model

The two-factor Hull–White model contains an additional disturbance term whose mean reverts to zero, and is of the form: :d\,f(r(t)) = \left theta(t) + u - \alpha(t)\,f(r(t))\right t + \sigma_1(t)\, dW_1(t), where \displaystyle u has an initial value of 0 and follows the process: :du = -bu\,dt + \sigma_2\,dW_2(t)


Analysis of the one-factor model

For the rest of this article we assume only \theta has ''t''-dependence. Neglecting the stochastic term for a moment, notice that for \alpha > 0 the change in ''r'' is negative if ''r'' is currently "large" (greater than \theta(t)/\alpha) and positive if the current value is small. That is, the stochastic process is a mean-reverting
Ornstein–Uhlenbeck process In mathematics, the Ornstein–Uhlenbeck process is a stochastic process with applications in financial mathematics and the physical sciences. Its original application in physics was as a model for the velocity of a massive Brownian particle ...
. θ is calculated from the initial
yield curve In finance, the yield curve is a graph which depicts how the Yield to maturity, yields on debt instruments - such as bonds - vary as a function of their years remaining to Maturity (finance), maturity. Typically, the graph's horizontal or ...
describing the current term structure of interest rates. Typically α is left as a user input (for example it may be estimated from historical data). σ is determined via
calibration In measurement technology and metrology, calibration is the comparison of measurement values delivered by a device under test with those of a calibration standard of known accuracy. Such a standard could be another measurement device of known a ...
to a set of caplets and
swaption A swaption is an option granting its owner the right but not the obligation to enter into an underlying swap. Although options can be traded on a variety of swaps, the term "swaption" typically refers to options on interest rate swaps. Types of ...
s readily tradeable in the market. When \alpha, \theta, and \sigma are constant,
Itô's lemma In mathematics, Itô's lemma or Itô's formula (also called the Itô-Doeblin formula, especially in French literature) is an identity used in Itô calculus to find the differential of a time-dependent function of a stochastic process. It serves ...
can be used to prove that : r(t) = e^r(0) + \frac \left(1- e^\right) + \sigma e^\int_0^t e^\,dW(u), which has distribution :r(t) \sim \mathcal\left(e^ r(0) + \frac \left(1- e^\right), \frac \left(1-e^\right)\right), where \mathcal( \mu ,\sigma^2 ) is the
normal distribution In statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is : f(x) = \frac e^ The parameter \mu i ...
with mean \mu and variance \sigma^2. When \theta(t) is time-dependent, : r(t) = e^r(0) + \int_^e^\theta(s)ds + \sigma e^\int_0^t e^\,dW(u), which has distribution :r(t) \sim \mathcal\left(e^ r(0) + \int_^e^\theta(s)ds, \frac \left(1-e^\right)\right).


Bond pricing using the Hull–White model

It turns out that the time-''S'' value of the ''T''-maturity discount bond has distribution (note the ''affine term'' structure here!) :P(S,T) = A(S,T)\exp(-B(S,T)r(S)), where : B(S,T) = \frac , : A(S,T) = \frac\exp\left( \, -B(S,T) \frac - \frac\right) . Note that their terminal distribution for P(S,T) is distributed log-normally.


Derivative pricing

By selecting as numeraire the time-''S'' bond (which corresponds to switching to the ''S''-forward measure), we have from the
fundamental theorem of arbitrage-free pricing The fundamental theorems of asset pricing (also: of arbitrage, of finance), in both financial economics and mathematical finance, provide necessary and sufficient conditions for a market to be arbitrage-free, and for a market to be complete. An a ...
, the value at time ''t'' of a derivative which has payoff at time ''S''. :V(t) = P(t,S)\mathbb_S (S) \mid \mathcal(t) Here, \mathbb_S is the expectation taken with respect to the
forward measure Forward is a relative direction, the opposite of backward. Forward may also refer to: People * Forward (surname) Sports * Forward (association football) * Forward (basketball), including: ** Point forward ** Power forward (basketball) ** Sm ...
. Moreover, standard arbitrage arguments show that the time ''T'' forward price F_V(t,T) for a payoff at time ''T'' given by ''V(T)'' must satisfy F_V(t,T) = V(t)/P(t,T), thus :F_V(t,T) = \mathbb_T (T)\mid\mathcal(t) Thus it is possible to value many derivatives ''V'' dependent solely on a single bond P(S,T) analytically when working in the Hull–White model. For example, in the case of a bond put :V(S) = (K-P(S,T))^+. Because P(S,T) is lognormally distributed, the general calculation used for the
Black–Scholes model The Black–Scholes or Black–Scholes–Merton model is a mathematical model for the dynamics of a financial market containing derivative investment instruments. From the parabolic partial differential equation in the model, known as the Black� ...
shows that :_S K-P(S,T))^= KN(-d_2) - F(t,S,T)N(-d_1), where :d_1 = \frac and :d_2 = d_1 - \sigma_P \sqrt. Thus today's value (with the ''P''(0,''S'') multiplied back in and ''t'' set to 0) is: :P(0,S)KN(-d_2) - P(0,T)N(-d_1). Here \sigma_P is the standard deviation (relative volatility) of the log-normal distribution for P(S,T). A fairly substantial amount of algebra shows that it is related to the original parameters via :\sqrt\sigma_P =\frac(1-\exp(-\alpha(T-S)))\sqrt. Note that this expectation was done in the ''S''-bond measure, whereas we did not specify a measure at all for the original Hull–White process. This does not matter — the volatility is all that matters and is measure-independent. Because interest rate caps/floors are equivalent to bond puts and calls respectively, the above analysis shows that caps and floors can be priced analytically in the Hull–White model. Jamshidian's trick applies to Hull–White (as today's value of a swaption in the Hull–White model is a
monotonic function In mathematics, a monotonic function (or monotone function) is a function between ordered sets that preserves or reverses the given order. This concept first arose in calculus, and was later generalized to the more abstract setting of ord ...
of today's short rate). Thus knowing how to price caps is also sufficient for pricing swaptions. In the even that the underlying is a compounded backward-looking rate rather than a (forward-looking) LIBOR term rate, Turfus (2020) shows how this formula can be straightforwardly modified to take into account the additional
convexity Convex or convexity may refer to: Science and technology * Convex lens, in optics Mathematics * Convex set, containing the whole line segment that joins points ** Convex polygon, a polygon which encloses a convex set of points ** Convex polytope, ...
. Swaptions can also be priced directly as described in Henrard (2003). Direct implementations are usually more efficient.


Monte-Carlo simulation, trees and lattices

However, valuing vanilla instruments such as caps and swaptions is useful primarily for calibration. The real use of the model is to value somewhat more exotic derivatives such as bermudan swaptions on a lattice, or other derivatives in a multi-currency context such as Quanto Constant Maturity Swaps, as explained for example in Brigo and Mercurio (2001). The efficient and exact Monte-Carlo simulation of the Hull–White model with time dependent parameters can be easily performed, see Ostrovski (2013) and (2016).


Forecasting

Even though single factor models such as Vasicek, CIR and Hull–White model has been devised for pricing, recent research has shown their potential with regard to forecasting. In Orlando et al. (2018, 2019,) was provided a new methodology to forecast future interest rates called CIR#. The ideas, apart from turning a short-rate model used for pricing into a forecasting tool, lies in an appropriate partitioning of the dataset into subgroups according to a given distribution ). In there it was shown how the said partitioning enables capturing statistically significant time changes in volatility of interest rates. following the said approach, Orlando et al. (2021) ) compares the Hull–White model with the CIR model in terms of forecasting and prediction of interest rate directionality.


See also

*
Vasicek model In finance, the Vasicek model is a mathematical model describing the evolution of interest rates. It is a type of one-factor short-rate model as it describes interest rate movements as driven by only one source of market risk. The model can be us ...
*
Cox–Ingersoll–Ross model In mathematical finance, the Cox–Ingersoll–Ross (CIR) model describes the evolution of interest rates. It is a type of "one factor model" (short-rate model) as it describes interest rate movements as driven by only one source of market ...
*
Black–Karasinski model In financial mathematics, the Black–Karasinski model is a mathematical model of the term structure of interest rates; see short-rate model. It is a one-factor model as it describes interest rate movements as driven by a single source of randomnes ...


References

;Primary references *John Hull and Alan White, "Using Hull–White interest rate trees," ''Journal of Derivatives'', Vol. 3, No. 3 (Spring 1996), pp. 26–36 *John Hull and Alan White, "Numerical procedures for implementing term structure models I," ''Journal of Derivatives'', Fall 1994, pp. 7–16. *John Hull and Alan White, "Numerical procedures for implementing term structure models II," ''Journal of Derivatives'', Winter 1994, pp. 37–48. *John Hull and Alan White, "The pricing of options on interest rate caps and floors using the Hull–White model" in ''Advanced Strategies in Financial Risk Management'', Chapter 4, pp. 59–67. *John Hull and Alan White, "One factor interest rate models and the valuation of interest rate derivative securities," ''Journal of Financial and Quantitative Analysis'', Vol 28, No 2, (June 1993) pp. 235–254. *John Hull and Alan White, "Pricing interest-rate derivative securities", ''The Review of Financial Studies'', Vol 3, No. 4 (1990) pp. 573–592. ;Other references * * *Henrard, Marc (2003). "Explicit Bond Option and Swaption Formula in Heath–Jarrow–Morton One Factor Model," ''International Journal of Theoretical and Applied Finance'', 6(1), 57–72
Preprint SSRN
*Henrard, Marc (2009). Efficient swaptions price in Hull–White one factor model, arXiv, 0901.1776v1
Preprint arXiv
*Ostrovski, Vladimir (2013). Efficient and Exact Simulation of the Hull–White Model
Preprint SSRN.
*Ostrovski, Vladimir (2016). Efficient and Exact Simulation of the Gaussian Affine Interest Rate Models., ''International Journal of Financial Engineering, Vol. 3, No. 02.'
Preprint SSRN.
*Puschkarski, Eugen
''Implementation of Hull–White's No-Arbitrage Term Structure Model''
Diploma Thesis, Center for Central European Financial Markets *Turfus, Colin (2020). Caplet Pricing with Backward-Looking Rates.
Preprint SSRN.
*Letian Wang

Fixed Income Quant Group, DTCC (detailed numeric example and derivation) {{DEFAULTSORT:Hull-White model Interest rates Fixed income analysis Short-rate models Financial models