Variable selection via composite quantile regression with dependent errors
type="main" xml:id="stan12035-abs-0001">We propose composite quantile regression for dependent data, in which the errors are from short-range dependent and strictly stationary linear processes. Under some regularity conditions, we show that composite quantile estimator enjoys root-n consistency and asymptotic normality. We investigate the asymptotic relative efficiency of composite quantile estimator to both single-level quantile regression and least-squares regression. When the errors have finite variance, the relative efficiency of composite quantile estimator with respect to the least-squares estimator has a universal lower bound. Under some regularity conditions, the adaptive least absolute shrinkage and selection operator penalty leads to consistent variable selection, and the asymptotic distribution of the non-zero coefficient is the same as that of the counterparts obtained when the true model is known. We conduct a simulation study and a real data analysis to evaluate the performance of the proposed approach.
Year of publication: |
2015
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Authors: | Tang, Yanlin ; Song, Xinyuan ; Zhu, Zhongyi |
Published in: |
Statistica Neerlandica. - Netherlands Society for Statistics and Operations Research, ISSN 0039-0402. - Vol. 69.2015, 1, p. 1-20
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Publisher: |
Netherlands Society for Statistics and Operations Research |
Saved in:
Online Resource
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