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Wide-Sense Stationarity (WSS) A process {X t } is Wide-Sense Stationary (or covariance stationary) if it possesses a finite second moment (E[X t 2 ] Constant Mean: E[X t ] = μ for all t . Time-Invariant Covariance: The autocovariance between any two observations depends solely on the lag τ: Cov(X t , X t+τ ) = γ(τ). (This implies a constant variance, where Var(X t ) = γ(0)). White Noise (WN) A process {ε t } is defined as white noise if it is a WSS process with E[ε t ] = 0, constant variance σ 2 , and Cov(ε t , ε t+τ ) = 0 for all τ ≠ 0. If the variables are also independent and identically distributed (I.I.D.), it is termed "Independent White Noise." LTI Systems and Discrete Convolution A stationary time series is characterized as the output of a Linear Time-Invariant (LTI) system driven by...