Efficient quantile regression for heteroscedastic models |
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Authors: | Yoonsuh Jung Yoonkyung Lee |
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Affiliation: | 1. Department of Statistics, University of Waikato, Hamilton 3240, New Zealand;2. Department of Statistics, The Ohio State University, Columbus, OH 43210, USA |
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Abstract: | Quantile regression (QR) provides estimates of a range of conditional quantiles. This stands in contrast to traditional regression techniques, which focus on a single conditional mean function. Lee et al. [Regularization of case-specific parameters for robustness and efficiency. Statist Sci. 2012;27(3):350–372] proposed efficient QR by rounding the sharp corner of the loss. The main modification generally involves an asymmetric ?2 adjustment of the loss function around zero. We extend the idea of ?2 adjusted QR to linear heterogeneous models. The ?2 adjustment is constructed to diminish as sample size grows. Conditions to retain consistency properties are also provided. |
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Keywords: | check loss function heteroscedasticity quantile regression |
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