Penalized weighted composite quantile regression in the linear regression model with heavy-tailed autocorrelated errors

被引:3
|
作者
Yunlu Jiang
Hong Li
机构
[1] Jinan University,Department of Statistics, College of Economics
[2] Shanghai University of Finance and Economics,Department of Banking, School of Finance
关键词
Composite quantile regression; Heavy-tailed autoregressive error models; Oracle properties; primary 62G35; secondary 62H12;
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学科分类号
摘要
In this paper, a penalized weighted composite quantile regression estimation procedure is proposed to estimate unknown regression parameters and autoregression coefficients in the linear regression model with heavy-tailed autoregressive errors. Under some conditions, we show that the proposed estimator possesses the oracle properties. In addition, we introduce an iterative algorithm to achieve the proposed optimization problem, and use a data-driven method to choose the tuning parameters. Simulation studies demonstrate that the proposed new estimation method is robust and works much better than the least squares based method when there are outliers in the dataset or the autoregressive error distribution follows heavy-tailed distributions. Moreover, the proposed estimator works comparably to the least squares based estimator when there are no outliers and the error is normal. Finally, we apply the proposed methodology to analyze the electricity demand dataset.
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页码:531 / 543
页数:12
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