Finite-dimensional distributions of a stochastic process #
For a stochastic process X : T → Ω → 𝓧 and a finite measure P on Ω, the law of the process is
P.map (fun ω ↦ (X · ω)), and its finite-dimensional distributions are
P.map (fun ω ↦ I.restrict (X · ω)) for I : Finset T.
We show that two stochastic processes have the same laws if and only if they have the same finite-dimensional distributions.
Main statements #
- map_eq_iff_forall_finset_map_restrict_eq: two processes have the same law if and only if their finite-dimensional distributions are equal.
- identDistrib_iff_forall_finset_identDistrib: same statement, but stated in terms of- IdentDistrib.
- map_restrict_eq_of_forall_ae_eq: if two processes are modifications of each other, then their finite-dimensional distributions are equal.
- map_eq_of_forall_ae_eq: if two processes are modifications of each other, then they have the same law.
The finite-dimensional distributions of a stochastic process are a projective measure family.
The projective limit of the finite-dimensional distributions of a stochastic process is the law of the process.
Two stochastic processes have same law iff they have the same finite-dimensional distributions.
Two stochastic processes are identically distributed iff they have the same finite-dimensional distributions.
If two processes are modifications of each other, then they have the same finite-dimensional distributions.
If two processes are modifications of each other, then they have the same distribution.