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In finance, the Vasicek model is a
mathematical model A mathematical model is a description of a system using mathematical concepts and language. The process of developing a mathematical model is termed mathematical modeling. Mathematical models are used in the natural sciences (such as physics, ...
describing the evolution of
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, t ...
s. 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 used in the valuation of interest rate derivatives, and has also been adapted for credit markets. It was introduced in 1977 by
Oldřich Vašíček Oldřich Alfons Vašíček (; born 1942) is a Czech mathematician and quantitative analyst, best known for his pioneering work on interest rate modelling; see Vasicek model. Vašíček received his master's degree in math from the Czech Technical U ...
, and can be also seen as a
stochastic investment model A stochastic investment model tries to forecast how returns and prices on different assets or asset classes, (e. g. equities or bonds) vary over time. Stochastic models are not applied for making point estimation rather interval estimation and the ...
.


Details

The model specifies that the instantaneous interest rate follows the stochastic differential equation: :dr_t= a(b-r_t)\, dt + \sigma \, dW_t where ''Wt'' is a
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 i ...
under the risk neutral framework modelling the random market risk factor, in that it models the continuous inflow of randomness into the system. The standard deviation parameter, \sigma, determines the volatility of the interest rate and in a way characterizes the amplitude of the instantaneous randomness inflow. The typical parameters b, a and \sigma, together with the initial condition r_0, completely characterize the dynamics, and can be quickly characterized as follows, assuming a to be non-negative: * b: "long term mean level". All future trajectories of r will evolve around a mean level b in the long run; * a: "speed of reversion". a characterizes the velocity at which such trajectories will regroup around b in time; * \sigma: "instantaneous volatility", measures instant by instant the amplitude of randomness entering the system. Higher \sigma implies more randomness The following derived quantity is also of interest, * /(2 a): "long term variance". All future trajectories of r will regroup around the long term mean with such variance after a long time. a and \sigma tend to oppose each other: increasing \sigma increases the amount of randomness entering the system, but at the same time increasing a amounts to increasing the speed at which the system will stabilize statistically around the long term mean b with a corridor of variance determined also by a. This is clear when looking at the long term variance, :\frac which increases with \sigma but decreases with a. This model is an Ornstein–Uhlenbeck stochastic process. Making the long term mean stochastic to another SDE is a simplified version of the cointelation SDE.


Discussion

Vasicek's model was the first one to capture mean reversion, an essential characteristic of the interest rate that sets it apart from other financial prices. Thus, as opposed to
stock In finance, stock (also capital stock) consists of all the shares by which ownership of a corporation or company is divided.Longman Business English Dictionary: "stock - ''especially AmE'' one of the shares into which ownership of a company ...
prices for instance, interest rates cannot rise indefinitely. This is because at very high levels they would hamper economic activity, prompting a decrease in interest rates. Similarly, interest rates do not usually decrease below 0. As a result, interest rates move in a limited range, showing a tendency to revert to a long run value. The drift factor a(b-r_t) represents the expected instantaneous change in the interest rate at time ''t''. The parameter ''b'' represents the long-run equilibrium value towards which the interest rate reverts. Indeed, in the absence of shocks (dW_t = 0), the interest rate remains constant when ''rt = b''. The parameter ''a'', governing the speed of adjustment, needs to be positive to ensure
stability Stability may refer to: Mathematics * Stability theory, the study of the stability of solutions to differential equations and dynamical systems ** Asymptotic stability ** Linear stability ** Lyapunov stability ** Orbital stability ** Structural st ...
around the long term value. For example, when ''rt'' is below ''b'', the drift term a(b-r_t) becomes positive for positive ''a'', generating a tendency for the interest rate to move upwards (toward equilibrium). The main disadvantage is that, under Vasicek's model, it is theoretically possible for the interest rate to become negative, an undesirable feature under pre-crisis assumptions. This shortcoming was fixed in the Cox–Ingersoll–Ross model, exponential Vasicek model, Black–Derman–Toy model and
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 randomness ...
, among many others. The Vasicek model was further extended in the Hull–White model. The Vasicek model is also a canonical example of the affine term structure model, along with the Cox–Ingersoll–Ross model. In recent research both models were used for data partitioning and forecasting.


Asymptotic mean and variance

We solve the stochastic differential equation to obtain : r_t = r_0 e^ + b\left(1- e^\right) + \sigma e^\int_0^t e^\,dW_s.\,\! Using similar techniques as applied to the Ornstein–Uhlenbeck stochastic process we get that state variable is distributed normally with mean :\mathrm _t= r_0 e^ + b(1 - e^) and variance :\mathrm _t= \frac(1 - e^). Consequently, we have :\lim_ \mathrm _t= b and :\lim_ \mathrm _t= \frac.


Bond pricing

Under the no-arbitrage assumption, a discount bond may be priced in the Vasicek model. The time t value of a discount bond with maturity date T is exponential affine in the interest rate: :P(t,T) = e^ where :B(t,T) = \frac :A(t,T) = \left(b - \frac\right)\left (t,T) - (T-t)\right- \fracB^2(t,T)


See also

* Ornstein–Uhlenbeck process. * Hull–White model * Cox–Ingersoll–Ross model


References

* * *


External links


The Vasicek Model
Bjørn Eraker, Wisconsin School of Business
Yield Curve Estimation and Prediction with the Vasicek Model
D. Bayazit,
Middle East Technical University Middle East Technical University (commonly referred to as METU; in Turkish, ''Orta Doğu Teknik Üniversitesi'', ODTÜ) is a public technical university located in Ankara, Turkey. The university emphasizes research and education in engineering a ...
{{Stochastic processes Interest rates Fixed income analysis Short-rate models Financial models