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Cressie-Read Power-Divergence Statistics for Non-Gaussian Vector Stationary Processes

机译:非高斯向量平稳过程的Cressie读取功率散度统计

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摘要

For a class of vector-valued non-Gaussian stationary processes, we develop the Cressie-Read power-divergence (CR) statistic approach which has been proposed for the i.i.d. case. The CR statistic includes empirical likelihood as a special case. Therefore, by adopting this CR statistic approach, the theory of estimation and testing based on empirical likelihood is greatly extended. We use an extended Whittle likelihood as score function and derive the asymptotic distribution of the CR statistic. We apply this result to estimation of autocorrelation and the AR coefficient, and get narrower confidence intervals than those obtained by existing methods. We also consider the power properties of the test based on asymptotic theory. Under a sequence of contiguous local alternatives, we derive the asymptotic distribution of the CR statistic. The problem of testing autocorrelation is discussed and we introduce some interesting properties of the local power.
机译:对于一类矢量值的非高斯平稳过程,我们开发了针对I.i.d提出的Cressie-Read幂散度(CR)统计方法。案件。 CR统计量包括经验可能性作为特例。因此,通过采用这种CR统计方法,极大地扩展了基于经验似然性的估计和检验理论。我们使用扩展的Whittle可能性作为得分函数,并得出CR统计量的渐近分布。我们将此结果应用于自相关和AR系数的估计,并获得比现有方法更窄的置信区间。我们还考虑基于渐近理论的检验的功效。在一系列连续的局部替代项下,我们得出CR统计量的渐近分布。讨论了测试自相关的问题,并介绍了本地功率的一些有趣特性。

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