Autocovariance
In probability theory and statistics, given a stochastic process , the autocovariance is a function that gives the covariance of the process with itself at pairs of time points. With the usual notation E for the expectation operator, if the process has the mean function , then the autocovariance is given by
Autocovariance is closely related to the more commonly used autocorrelation of the process in question.
In the case of a multivariate random vector , the autocovariance becomes a square n by n matrix, , with entry given by and commonly referred to as the autocovariance matrix associated with vectors and .
Weak stationarity
If X(t) is a weakly stationary process, then the following are true:
- for all t, s
and
where is the lag time, or the amount of time by which the signal has been shifted.
Normalization
When normalizing the autocovariance, C, of a weakly stationary process with its variance, , one obtains the autocorrelation coefficient :[1]
with .
Properties
The autocovariance of a linearly filtered process
is
See also
- Autocorrelation
- Covariance and Correlation
- Covariance mapping
- Cross-covariance
- Cross-correlation
- Noise covariance estimation (as an application example)
References
- Hoel, P. G. (1984). Mathematical Statistics (Fifth ed.). New York: Wiley. ISBN 0-471-89045-6.
- Lecture notes on autocovariance from WHOI