stationariness
Stationariness is a property of certain stochastic processes, which are mathematical objects used to model random phenomena that evolve over time. A stochastic process is considered stationary if its statistical properties, such as its mean, variance, and autocorrelation, do not change over time. This means that the way the process behaves randomly is consistent from one point in time to another.
There are different types of stationariness. Strict stationariness requires that the joint probability distribution of the
Stationary processes are important in many fields, including time series analysis, signal processing, and econometrics. Their