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SPECTRAL DENSITY ESTIMATION AND ROBUST HYPOTHESIS TESTING USING STEEP ORIGIN KERNELS WITHOUT TRUNCATION

机译:无截断的陡峭原始核的谱密度估计和鲁棒假设检验

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摘要

A new class of kernels for long-run variance and spectral density estimation is developed by exponentiating traditional quadratic kernels. Depending on whether the exponent parameter is allowed to grow with the sample size, we establish different asymptotic approximations to the sampling distribution of the proposed estimators. When the exponent is passed to infinity with the sample size, the new estimator is consistent and shown to be asymptotically normal. When the exponent is fixed, the new estimator is inconsistent and has a nonstandard limiting distribution. It is shown via Monte Carlo experiments that, when the chosen exponent is small in practical applications, the nonstandard limit theory provides better approximations to the finite sample distributions of the spectral density estimator and the associated test statistic in regression settings. Copyright 2006 by the Economics Department Of The University Of Pennsylvania And Osaka University Institute Of Social And Economic Research Association.
机译:通过对传统的二次内核求幂,开发了用于长期方差和频谱密度估计的一类新内核。根据是否允许指数参数随样本大小增长,我们对建议的估计量的样本分布建立了不同的渐近近似。当指数以样本大小传递到无穷大时,新的估计量是一致的,并且显示为渐近正态。当指数固定时,新的估计量将不一致并且具有非标准的极限分布。通过蒙特卡洛实验表明,当在实际应用中选择的指数较小时,非标准极限理论可以更好地近似估计光谱密度估计器的有限样本分布以及回归设置中的相关测试统计量。宾夕法尼亚大学经济系和大阪大学社会经济研究所协会版权所有2006。

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