- Girsanov theorem
In
probability theory , the Girsanov theorem tells howstochastic process es change under changes in measure. The theorem is especially important in the theory offinancial mathematics as it tells how to convert from thephysical measure which describes the probability that anunderlying instrument (such as a share price orinterest rate ) will take a particular value or values to therisk-neutral measure which is a very useful tool for evaluating the value of derivatives on the underlying.History
Results of this type were first proved by Cameron-Martin in the 1940s and by Girsanov in 1960. They have been subsequently extended to more general classes of process culminating in the general form of Lenglart (1977).
ignificance
Girsanov's theorem is important in the general theory of stochastic processes since it enables the key result that if "Q" is a measure absolutely continuous with respect to "P" then every "P"-semimartingale is a "Q"-semimartingale.
tatement of theorem
We state the theorem first for the special case when the underlying stochastic process is a
Wiener process . This special case is sufficient for risk-neutral pricing in theBlack-Scholes model and in many other models (eg all continuous models).Let be a Wiener process on the Wiener
probability space . Let be a measurable process adapted to the natural filtration of the Wiener process .Given an adapted process define
:
where is the stochastic exponential (or
Doléans exponential ) of "X" with respect to "W", i.e.:
If is a martingale then a probability measure "Q" can be defined on such that
Radon-Nikodym derivative :
Then for each "t" the measure "Q" restricted to the unaugmented sigma fields is equivalent to "P" restricted to
Furthermore if "Y" is a local martingale under "P" then the process
:
is a "Q" local martingale on the
filtered probability space .Corollary
If "X" is a continuous process and "W" is Brownian Motion under measure "P" then:is Brownian motion under "Q".
The fact that is continuous is trivial; by Girsanov's theorem it is a "Q" local martingale, and by computing
:
it follows by Levy's characterization of Brownian Motion that this is a "Q" BrownianMotion.
Comments
In many common applications, the process "X" is defined by
:
For "X" of this form then a sufficient condition for to be a martingale is
Novikov's condition which requires that:
The stochastic exponential is the process "Z" which solves the stochastic differential equation
:
The measure "Q" constructed above is not equivalent to "P" on as this would only be the case if the Radon-Nikodym derivative were a uniformly integrable martingale, which the exponential martingale described above is not (for ).
Application to finance
This theorem can be used to show in the Black-Scholes model the unique risk neutral measure, i.e. the measure in which the fair value of a derivative is the discounted expected value, Q, is specified by
:
ee also
*
Cameron-Martin theorem References
* C. Dellacherie and P.-A. Meyer, "Probabilités et potentiel -- Théorie de Martingales" Chapitre VII, Hermann 1980
* E. Lenglart "Transformation de martingales locales par changement absolue continu de probabilités", Zeitschrift für Wahrscheinlichkeit 39 (1977) pp 65-70.External links
* [http://www.chiark.greenend.org.uk/~alanb/stoc-calc.pdf Notes on Stochastic Calculus] which contains a simple outline proof of Girsanov's theorem.
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