A Durbin-Levinson Regularized Estimator of High Dimensional Autocovariance Matrices

Tommaso Proietti, A. Giovannelli
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引用次数: 1

Abstract

We consider the problem of estimating the high-dimensional autocovariance matrix of a stationary random process, with the purpose of out of sample prediction and feature extraction. This problem has received several solutions. In the nonparametric framework, the literature has concentrated on banding and tapering the sample autocovariance matrix. This paper proposes and evaluates an alternative approach, based on regularizing the sample partial autocorrelation function, via a modified Durbin-Levinson algorithm that receives as input the banded and tapered partial autocorrelations and returns a sample autocovariance sequence which is positive definite. We show that the regularized estimator of the autocovariance matrix is consistent and its convergence rates is established. We then focus on constructing the optimal linear predictor and we assess its properties. The computational complexity of the estimator is of the order of the square of the banding parameter, which renders our method scalable for high-dimensional time series. The performance of the autocovariance estimator and the corresponding linear predictor is evaluated by simulation and empirical applications.
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高维自协方差矩阵的Durbin-Levinson正则估计
研究了平稳随机过程的高维自协方差矩阵估计问题,目的是进行样本外预测和特征提取。这个问题已经有了几种解决方案。在非参数框架中,文献集中于样本自协方差矩阵的条带化和渐窄化。本文提出并评估了一种基于正则化样本偏自相关函数的替代方法,通过改进的Durbin-Levinson算法,该算法接收带状和锥形偏自相关作为输入,并返回一个样本自协方差序列,该序列是正定的。证明了自协方差矩阵的正则化估计量是一致的,并建立了其收敛速率。然后重点构建最优线性预测器并评估其性质。估计器的计算复杂度是带形参数的平方数量级,这使得我们的方法对高维时间序列具有可扩展性。通过仿真和经验应用对自协方差估计器和相应的线性预测器的性能进行了评价。
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