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Identification of noncausal ARMA models of non-Gaussian processes using higher-order statistics

机译:使用高阶统计识别非高斯过程的非高斯过程的arma模型

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The problem of estimating the parameters of a stable, scalar, noncausal autoregressive moving average (ARMA) (p,q) signal model driven by an i.i.d. non-Gaussian sequence is considered. The driving noise sequence is not observed. Two methods are proposed and analyzed: one is a multistep linear method and the other is a nonlinear optimization method. Both methods exploit both the second- and third-(or higher-) order cumulants of the observed signal. The strong consistency of the two estimators is proved. The main focus is on the linear method. Extensions to include i.i.d. measurement noise (Gaussian or non-Gaussian) can be done easily.
机译:估计由I.I.D驱动的稳定标量,非共源自回归移动平均(ARMA)(P,Q)信号模型参数的问题。考虑非高斯序列。未观察到驱动噪声序列。提出并分析了两种方法:一个是多步线性方法,另一个是非线性优化方法。两种方法都利用所观察信号的第二和第三(或更高)阶数累积量。证明了两种估算者的强趋势。主要重点是线性方法。扩展包括I.I.D.测量噪声(高斯或非高斯)可以轻松完成。

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