Efficient Nonparametric Estimation of Generalized Autocovariances

A. Luati, Francesca Papagni, Tommaso Proietti
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Abstract

This paper provides a necessary and sufficient condition for asymptotic efficiency of a nonparametric estimator of the generalized autocovariance function of a stationary random process. The generalized autocovariance function is the inverse Fourier transform of a power transformation of the spectral density and encompasses the traditional and inverse autocovariance functions as particular cases. A nonparametric estimator is based on the inverse discrete Fourier transform of the power transformation of the pooled periodogram. The general result on the asymptotic efficiency is then applied to the class of Gaussian stationary ARMA processes and its implications are discussed. Finally, we illustrate that for a class of contrast functionals and spectral densities, the minimum contrast estimator of the spectral density satisfies a Yule-Walker system of equations in the generalized autocovariance estimator.
广义自协方差的有效非参数估计
本文给出了平稳随机过程广义自协方差函数的非参数估计量渐近有效的一个充分必要条件。广义自协方差函数是谱密度幂变换的傅里叶反变换,包含传统自协方差函数和逆自协方差函数作为特殊情况。非参数估计是基于池化周期图幂变换的离散傅里叶反变换。将渐近效率的一般结果应用于一类高斯平稳ARMA过程,并讨论了其意义。最后,我们证明了对于一类对比泛函和谱密度,谱密度的最小对比估计量在广义自协方差估计量中满足Yule-Walker方程组。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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