Title of article :
A theory of robust long-run variance estimation
Author/Authors :
Müller، نويسنده , , Ulrich K.، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2007
Abstract :
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 is highly 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 variance estimators is derived that optimally trades off asymptotic variance in the benchmark model against the largest asymptotic bias in a specific set of contaminated models.
Keywords :
Qualitative robustness , Functional central limit theorem , Heteroskedasticity and autocorrelation consistent (HAC) variance estimation , bias
Journal title :
Journal of Econometrics
Journal title :
Journal of Econometrics