Nonstationary nonlinear quantile regression |
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Authors: | Yoshimasa Uematsu |
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Institution: | Department of Data Sciences and Operations, University of Southern California, Los Angeles, California, USA |
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Abstract: | This study examines estimation and inference based on quantile regression for parametric nonlinear models with an integrated time series covariate. We first derive the limiting distribution of the nonlinear quantile regression estimator and then consider testing for parameter restrictions, when the regression function is specified as an asymptotically homogeneous function. We also study linear-in-parameter regression models when the regression function is given by integrable regression functions as well as asymptotically homogeneous regression functions. We, furthermore, propose a fully modified estimator to reduce the bias in the original estimator under a certain set of conditions. Finally, simulation studies show that the estimators behave well, especially when the regression error term has a fat-tailed distribution. |
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Keywords: | Integrated time series nonlinear regression model quantile regression |
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