Itô's lemma
In mathematics, Itô's lemma is an identity used in Itô calculus to find the differential of a time-dependent function of a stochastic process. It serves as the stochastic calculus counterpart of the chain rule. It can be heuristically derived by forming the Taylor series expansion of the function up to its second derivatives and retaining terms up to first order in the time increment and second order in the Wiener process increment. The lemma is widely employed in mathematical finance, and its best known application is in the derivation of the Black–Scholes equation for option values.
Informal derivation
A formal proof of the lemma relies on taking the limit of a sequence of random variables. This approach is not presented here since it involves a number of technical details. Instead, we give a sketch of how one can derive Itô's lemma by expanding a Taylor series and applying the rules of stochastic calculus.Assume is an Itô drift-diffusion process that satisfies the stochastic differential equation
where is a Wiener process. If is a twice-differentiable scalar function, its expansion in a Taylor series is
Substituting for and therefore for gives
In the limit , the terms and tend to zero faster than, which is. Setting the and terms to zero, substituting for , and collecting the and terms, we obtain
as required.
Mathematical formulation of Itô's lemma
In the following subsections we discuss versions of Itô's lemma for different types of stochastic processes.Itô drift-diffusion processes (due to: Kunita–Watanabe)
In its simplest form, Itô's lemma states the following: for an Itô drift-diffusion processand any twice differentiable scalar function of two real variables and, one has
This immediately implies that is itself an Itô drift-diffusion process.
In higher dimensions, if is a vector of Itô processes such that
for a vector and matrix, Itô's lemma then states that
where is the gradient of w.r.t., is the Hessian matrix of w.r.t., and is the trace operator.
Poisson jump processes
We may also define functions on discontinuous stochastic processes.Let be the jump intensity. The Poisson process model for jumps is that the probability of one jump in the interval is plus higher order terms. could be a constant, a deterministic function of time, or a stochastic process. The survival probability is the probability that no jump has occurred in the interval. The change in the survival probability is
So
Let be a discontinuous stochastic process. Write for the value of S as we approach t from the left. Write for the non-infinitesimal change in as a result of a jump. Then
Let z be the magnitude of the jump and let be the distribution of z. The expected magnitude of the jump is
Define, a compensated process and martingale, as
Then
Consider a function of the jump process. If jumps by then jumps by. is drawn from distribution which may depend on, dg and. The jump part of is
If contains drift, diffusion and jump parts, then Itô's Lemma for is
Itô's lemma for a process which is the sum of a drift-diffusion process and a jump process is just the sum of the Itô's lemma for the individual parts.
Non-continuous semimartingales
Itô's lemma can also be applied to general -dimensional semimartingales, which need not be continuous. In general, a semimartingale is a càdlàg process, and an additional term needs to be added to the formula to ensure that the jumps of the process are correctly given by Itô's lemma.For any cadlag process, the left limit in is denoted by, which is a left-continuous process. The jumps are written as. Then, Itô's lemma states that if is a -dimensional semimartingale and f is a twice continuously differentiable real valued function on then f is a semimartingale, and
This differs from the formula for continuous semi-martingales by the additional term summing over the jumps of X, which ensures that the jump of the right hand side at time is Δf.
Multiple non-continuous jump processes
There is also a version of this for a twice-continuously differentiable in space once in time function f evaluated at non-continuous semi-martingales which may be written as follows:where denotes the continuous part of the ith semi-martingale.
Examples
Geometric Brownian motion
A process S is said to follow a geometric Brownian motion with constant volatility σ and constant drift μ if it satisfies the stochastic differential equation, for a Brownian motion B. Applying Itô's lemma with f = log givesIt follows that
exponentiating gives the expression for S,
The correction term of corresponds to the difference between the median and mean of the log-normal distribution, or equivalently for this distribution, the geometric mean and arithmetic mean, with the median being lower. This is due to the AM–GM inequality, and corresponds to the logarithm being convex down, so the correction term can accordingly be interpreted as a convexity correction. This is an infinitesimal version of the fact that the annualized return is less than the average return, with the difference proportional to the variance. See geometric moments of the log-normal distribution for further discussion.
The same factor of appears in the d1 and d2 auxiliary variables of the Black–Scholes formula, and can be interpreted as a consequence of Itô's lemma.
Doléans-Dade exponential
The Doléans-Dade exponential of a continuous semimartingale X can be defined as the solution to the SDE with initial condition. It is sometimes denoted by.Applying Itô's lemma with f = log gives
Exponentiating gives the solution
Black–Scholes formula
Itô's lemma can be used to derive the Black–Scholes equation for an option. Suppose a stock price follows a geometric Brownian motion given by the stochastic differential equation. Then, if the value of an option at time is f, Itô's lemma givesThe term represents the change in value in time dt of the trading strategy consisting of holding an amount of the stock. If this trading strategy is followed, and any cash held is assumed to grow at the risk free rate r, then the total value V of this portfolio satisfies the SDE
This strategy replicates the option if V = f. Combining these equations gives the celebrated Black–Scholes equation
Product rule for Itô processes
Let be a two-dimensional Ito process with SDE:Then we can use the multi-dimensional form of Ito's lemma to find an expression for.
We have and.
We set and observe that and
Substituting these values in the multi-dimensional version of the lemma gives us:
This is a generalisation of Leibniz's product rule to Ito processes, which are non-differentiable.
Further, using the second form of the multidimensional version above gives us
so we see that the product is itself an Itô drift-diffusion process.