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首页> 外文期刊>Journal of Time Series Analysis >STUDENTIZING WEIGHTED SUMS OF LINEAR PROCESSES
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STUDENTIZING WEIGHTED SUMS OF LINEAR PROCESSES

机译:加强线性过程的加权和

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摘要

This article presents a general method for studentizing weighted sums of a linear process where weights are arrays of known real numbers and innovations form a martingale difference sequence. Asymptotical normality for such sums was established in Abadir et al. (2013). This article centres on the estimation of the standard deviation, to make the normal approximation operational. The proposed studentization is easy to apply and robust against unknown types of dependence (short range and long range) in the observations. It does not require the estimation of the parameters controlling the dependence structure. A finite-sample Monte Carlo simulation study shows the applicability of the proposed methodology for moderate sample sizes. Assumptions for studentization are satisfied by the Nadaraya-Watson kernel type weights used for inference in non-parametric regression settings.
机译:本文介绍了一种用于求线性过程加权和的一般方法,其中权重是已知实数的数组,而创新则形成了difference差序列。在Abadir等人中确定了这种总和的渐近正态性。 (2013)。本文以标准差的估计为中心,以使法线逼近可操作。所提出的学生化方法易于应用,并且对于观察中的未知依赖类型(短距离和长距离)具有较强的鲁棒性。它不需要估计控制依赖性结构的参数。有限样本蒙特卡洛模拟研究表明,所提出的方法适用于中等样本量。用于学生化的假设由用于非参数回归设置中的推理的Nadaraya-Watson核类型权重满足。

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