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Jeffrey’s Divergence Between Fractionally Integrated White Noises

机译:杰弗里在分馏的白色噪音之间的分歧

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Jeffrey's divergence (JD) is used in many applications, from change detection to classification. Several studies were done on the JD between ergodic wide-sense stationary autoregressive and moving average (ARMA) processes. It was shown that the derivate of the JD between the probability density functions of k consecutive samples of two ARMA processes tends to the so-called asymptotic JD increment. This latter is enough to compare the processes and amounts to calculating the power of the first process filtered by the inverse filter associated with the second process and conversely. In this paper, our purpose is to study if this result can be extended to ARFIMA processes. As a first step, a special case, namely the JD between wide-sense stationary fractionally integrated white noises, is addressed. The influences of the process parameters on the asymptotic JD increment are analyzed. Our investigations validate the inverse filtering interpretation of the JD.
机译:杰弗里的分歧(JD)用于许多应用中,从变更检测到分类。在ergodic广义固定自回归和移动平均(ARMA)过程之间的JD之间进行了几项研究。结果表明,JD与两个ARMA过程的连续样本的概率密度函数之间的衍生趋向于所谓的渐近JD增量。该后者足以比较流程和量来计算由与第二过程相关联的逆滤波器过滤的第一过程的功率。在本文中,我们的目的是在研究此结果是否可以扩展到Arfima进程。作为第一步,解决了特殊情况,即广义固定分馏的白色噪声之间的JD。分析了过程参数对渐近JD增量的影响。我们的调查验证了JD的反滤波解释。

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