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Probabilistic Properties of Parametric Dual and Inverse Time Series Models Generated by ARMA Models

机译:ARMA模型生成的参数对偶和逆时间序列模型的概率性质

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摘要

For the class of autoregressive-moving average (ARMA) processes, we examine the relationship between the dual and the inverse processes. It is demonstrated that the inverse process generated by a causal and invertible ARMA (p, q) process is a causal and invertible ARMA (q, p) model. Moreover, it is established that this representation is strong if and only if the generating process is Gaussian. More precisely, it is derived that the linear innovation process of the inverse process is an all-pass model. Some examples and applications to time reversibility are given to illustrate the obtained results.
机译:对于自回归移动平均(ARMA)过程类别,我们研究了对偶过程与逆过程之间的关系。证明了因果可逆ARMA(p,q)过程生成的逆过程是因果可逆ARMA(q,p)模型。此外,可以确定的是,当且仅当生成过程是高斯时,该表示才很强。更准确地说,可以得出逆过程的线性创新过程是全过程模型。给出了时间可逆性的一些例子和应用以说明所获得的结果。

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