Adapted process explained

In the study of stochastic processes, a stochastic process is adapted (also referred to as a non-anticipating or non-anticipative process) if information about the value of the process at a given time is available at that same time. An informal interpretation[1] is that X is adapted if and only if, for every realisation and every n, Xn is known at time n. The concept of an adapted process is essential, for instance, in the definition of the Itō integral, which only makes sense if the integrand is an adapted process.

Definition

Let

(\Omega,l{F},P)

be a probability space;

I

be an index set with a total order

\leq

(often,

I

is

N

,

N0

,

[0,T]

or

[0,+infty)

);

F=\left(l{F}i\right)i

be a filtration of the sigma algebra

l{F}

;

(S,\Sigma)

be a measurable space, the state space;

Xi:I x \Omega\toS

be a stochastic process.

The stochastic process

(Xi)i\in

is said to be adapted to the filtration

\left(l{F}i\right)i

if the random variable

Xi:\Omega\toS

is a

(l{F}i,\Sigma)

-measurable function for each

i\inI

.[2]

Examples

Consider a stochastic process X : [0, ''T''] × Ω → R, and equip the real line R with its usual Borel sigma algebra generated by the open sets.

See also

Notes and References

  1. Book: Wiliams, David. 1979. Diffusions, Markov Processes and Martingales: Foundations. 1. Wiley. 0-471-99705-6. II.25.
  2. Book: Øksendal, Bernt. 2003. Stochastic Differential Equations. 25. 978-3-540-04758-2. Springer.