4.1 Article

EFFICIENT REGRESSIONS VIA OPTIMALLY COMBINING QUANTILE INFORMATION

Journal

ECONOMETRIC THEORY
Volume 30, Issue 6, Pages 1272-1314

Publisher

CAMBRIDGE UNIV PRESS
DOI: 10.1017/S0266466614000176

Keywords

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Funding

  1. NIDA [P50-DA10075-15]

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We develop a generally applicable framework for constructing efficient estimators of regression models via quantile regressions. The proposed method is based on optimally combining information over multiple quantiles and can be applied to a broad range of parametric and nonparametric settings. When combining information over a fixed number of quantiles, we derive an upper bound on the distance between the efficiency of the proposed estimator and the Fisher information. As the number of quantiles increases, this upper bound decreases and the asymptotic variance of the proposed estimator approaches the Cramer-Rao lower bound under appropriate conditions. In the case of nonregular statistical estimation, the proposed estimator leads to super-efficient estimation. We illustrate the proposed method for several widely used regression models. Both asymptotic theory and Monte Carlo experiments show the superior performance over existing methods.

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