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A theory of robust long-run variance estimation

机译:鲁棒长期方差估计的理论

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Long-run variance estimation can typically be viewed as the problem of estimating the scale of a limiting continuous time Gaussian process on the unit interval. A natural benchmark model is given by a sample that consists of equally spaced observations of this limiting process. The paper analyzes the asymptotic robustness of long-run variance estimators to contaminations of this benchmark model. It is shown that any equivariant long-run variance estimator that is consistent in the benchmark model ishighly fragile: there always exists a sequence of contaminated models with the same limiting behavior as the benchmark model for which the estimator converges in probability to an arbitrary positive value. A class of robust inconsistent long-run varianceestimators is derived that optimally trades off asymptotic variance in the benchmark model against the largest asymptotic bias in a specific set of contaminated models.
机译:长期方差估计通常可以看作是在单位间隔上估计有限连续时间高斯过程的规模的问题。一个自然基准模型是由一个样本组成的,该样本由对该限制过程的等间隔观察组成。本文分析了长期方差估计量对于该基准模型的污染的渐近鲁棒性。结果表明,在基准模型中一致的任何等变长期方差估计量都非常脆弱:总是存在一系列污染模型,其行为与基准模型具有相同的限制行为,对于该模型,估计量的概率收敛至任意正值。派生出一类鲁棒的不一致的长期方差估计量,可以最佳地权衡基准模型中的渐近方差与特定污染模型集中的最大渐近偏差。

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