Ergodic process


In econometrics and signal processing, a stochastic process is said to be ergodic if its statistical properties can be deduced from a single, sufficiently long, random sample of the process. The reasoning is that any collection of random samples from a process must represent the average statistical properties of the entire process. In other words, regardless of what the individual samples are, a birds-eye view of the collection of samples must represent the whole process. Conversely, a process that is not ergodic is a process that changes erratically at an inconsistent rate.

Specific definitions

One can discuss the ergodicity of various statistics of a stochastic process. For example, a wide-sense stationary process has constant mean
and autocovariance
that depends only on the lag and not on time. The properties and
are ensemble averages not time averages.
The process is said to be mean-ergodic or mean-square ergodic in the first moment
if the time average estimate
converges in squared mean to the ensemble average as.
Likewise,
the process is said to be autocovariance-ergodic or d moment
if the time average estimate
converges in squared mean to the ensemble average, as.
A process which is ergodic in the mean and autocovariance is sometimes called ergodic in the wide sense.

Discrete-time random processes

The notion of ergodicity also applies to discrete-time random processes
for integer.
A discrete-time random process is ergodic in mean if
converges in squared mean
to the ensemble average,
as.

Examples

Ergodicity means the ensemble average equals the time average. Following are examples to illustrate this principle.

Call centre

Each operator in a call centre spends time alternately speaking and listening on the telephone, as well as taking breaks between calls. Each break and each call are of different length, as are the durations of each 'burst' of speaking and listening, and indeed so is the rapidity of speech at any given moment, which could each be modelled as a random process.
Each resistor has an associated thermal noise that depends on the temperature. Take N resistors and plot the voltage across those resistors for a long period. For each resistor you will have a waveform. Calculate the average value of that waveform; this gives you the time average. There are N waveforms as there are N resistors. These N plots are known as an ensemble. Now take a particular instant of time in all those plots and find the average value of the voltage. That gives you the ensemble average for each plot. If ensemble average and time average are the same then it is ergodic.

Examples of non-ergodic random processes