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WeaklyStationaryStochasticProcess

Stephen Crowley edited this page Nov 20, 2023 · 2 revisions

The covariance function of a weakly stationary stochastic process is characterized by the following properties:

  1. Dependence on Time Interval: The covariance function $R(t, s)$ depends only on the time interval $\tau = t - s$, not on the specific times $t$ and $s$. This is expressed as:

$$ R(t, s) = R(t - s) = R(\tau) $$

  1. Symmetry: The covariance function is symmetric with respect to the time interval, meaning $R(\tau) = R(-\tau)$.

  2. Finite and Constant Variance: The variance of the process at any time point is finite and constant over time, indicated by $R(0)$ being finite.

  3. Spectral Representation: The covariance function $R(\tau)$ can be represented as the Fourier transform of a non-negative, finite measure $F(\lambda)$, known as the spectral distribution function:

$$ R(\tau) = \int_{-\infty}^{\infty} e^{i\lambda\tau} dF(\lambda) $$

This representation, which is a consequence of Bochner's theorem, ensures that the covariance function is positive definite and encapsulates the frequency content of the process.

In summary, the covariance function of a weakly stationary stochastic process is characterized by its dependence only on the time interval between two points, its symmetry, finite and constant variance, and a spectral representation that adheres to Bochner's theorem. These properties facilitate the analysis of such processes using tools like autocorrelation functions and power spectra.

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