nLab stationary stochastic process

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Contents

Context

Physics

physics, mathematical physics, philosophy of physics

Surveys, textbooks and lecture notes


theory (physics), model (physics)

experiment, measurement, computable physics

Measure and probability theory

Contents

Idea

A stochastic process is called stationary if the probability of each trajectory is invariant under (rigid) time translation?.

It is a way to encode mathematically a system which might exhibit randomness? as well as memory?, but which does not explicitly depend on time.

Definition

A stochastic process (X t) tT(X_t)_{t\in T} (for T=,T=\mathbb{N},\mathbb{R}, etc.) is called stationary if and only if for every finite marginal (X t 1,,X t n)(X_{t_1},\dots,X_{t_n}) and each sTs\in T, the tuples

(X t 1,,X t n)and(X t 1+s,,X t n+s) (X_{t_1},\dots,X_{t_n}) \qquad and \qquad (X_{t_1+s},\dots,X_{t_n+s})

have the same joint distribution.

Note that this condition is stronger than requiring that the distributions of the single X tX_t are time-invariant: also the correlations, of any order, are time-invariant, as long as all the times are translated “rigidly”, by the same amount ss.

Equivalently, it is stationary if the complete joint distribution on X TX^T is shift-invariant, i.e. it is a measure-preserving dynamical system.

Examples

References

category: probability

Last revised on January 31, 2025 at 18:38:27. See the history of this page for a list of all contributions to it.