Stochastic processes | Signal processing

Stationary process

In mathematics and statistics, a stationary process (or a strict/strictly stationary process or strong/strongly stationary process) is a stochastic process whose unconditional joint probability distribution does not change when shifted in time. Consequently, parameters such as mean and variance also do not change over time. If you draw a line through the middle of a stationary process then it should be flat; it may have 'seasonal' cycles, but overall it does not trend up nor down. Since stationarity is an assumption underlying many statistical procedures used in time series analysis, non-stationary data are often transformed to become stationary. The most common cause of violation of stationarity is a trend in the mean, which can be due either to the presence of a unit root or of a deterministic trend. In the former case of a unit root, stochastic shocks have permanent effects, and the process is not mean-reverting. In the latter case of a deterministic trend, the process is called a trend-stationary process, and stochastic shocks have only transitory effects after which the variable tends toward a deterministically evolving (non-constant) mean. A trend stationary process is not strictly stationary, but can easily be transformed into a stationary process by removing the underlying trend, which is solely a function of time. Similarly, processes with one or more unit roots can be made stationary through differencing. An important type of non-stationary process that does not include a trend-like behavior is a cyclostationary process, which is a stochastic process that varies cyclically with time. For many applications strict-sense stationarity is too restrictive. Other forms of stationarity such as wide-sense stationarity or N-th-order stationarity are then employed. The definitions for different kinds of stationarity are not consistent among different authors (see Other terminology). (Wikipedia).

Stationary process
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LĂ©vy process | White noise | Signal processing | Wavelet transform | Moment (mathematics) | Statistical regularity | Mean | Statistics | Stationary ergodic process | Fourier series | Cumulative distribution function | Stochastic process | Law of large numbers | Filter (signal processing) | Trend-stationary process | Ergodic process | Whittle likelihood | Marginal distribution | Autocorrelation | Ergodicity | Exponential function | Frequency domain | Bochner's theorem | Bernoulli scheme | Laplace transform | Circulant matrix | Variance | Cyclostationary process | Mathematics | Joint probability distribution | Autocovariance | Wiener–Khinchin theorem | Random variable | Eigenfunction | Hilbert space | Stationary process | Expected value | Unit root | Fourier transform | Algorithm | Covariance