The Wiener-Hopf equations are a Toeplitz system of linear equations that naturally arise in several applications in time series. These include the update and prediction step of the stationary Kalman filter equations and the prediction of bivariate time series. The celebrated Wiener-Hopf technique is usually used for solving these equations and is based on a comparison of coefficients in a Fourier series expansion. However, a statistical interpretation of both the method and solution is opaque. The purpose of this note is to revisit the (discrete) Wiener-Hopf equations and obtain an alternative solution that is more aligned with classical techniques in time series analysis. Specifically, we propose a solution to the Wiener-Hopf equations that combines linear prediction with deconvolution. The Wiener-Hopf solution requires the spectral factorization of the underlying spectral density function. For ease of evaluation it is often assumed that the spectral density is rational. This allows one to obtain a computationally tractable solution. However, this leads to an approximation error when the underlying spectral density is not a rational function. We use the proposed solution with Baxter's inequality to derive an error bound for the rational spectral density approximation.
翻译:Wiener-Hopf 等式通常用于解决这些等式,并基于对Fourier系列扩展中系数的比较。然而,对方法和解决方案的统计解释是不透明的。本说明的目的是重新审视(分解)Wiener-Hopf 等式,并获得一种在时间序列分析中更符合古典技术的替代解决方案。具体地说,我们提出了将线性预测与分解相结合的Wiener-Hopf 等式的解决方案。Wiener-Hopf 等式要求对基底光谱密度功能进行光谱系数化。为了便于评估,人们常常假设光谱密度是理性的。这样就可以获得一种可计算式的解决方案。然而,当基本光谱密度不是理性的光谱度差值时,这会导致近似错误。我们用一个合理的光谱光谱光谱光谱度值来约束一个分辨率。我们提出的解决方案是将光谱光谱系密度值与光谱系错误差的。