Journal of Applied Mathematics and Physics

Volume 8, Issue 1 (January 2020)

ISSN Print: 2327-4352   ISSN Online: 2327-4379

Google-based Impact Factor: 0.70  Citations  

Bayesian Regularized Quantile Regression Analysis Based on Asymmetric Laplace Distribution

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DOI: 10.4236/jamp.2020.81006    695 Downloads   1,895 Views  Citations

ABSTRACT

In recent years, variable selection based on penalty likelihood methods has aroused great concern. Based on the Gibbs sampling algorithm of asymmetric Laplace distribution, this paper considers the quantile regression with adaptive Lasso and Lasso penalty from a Bayesian point of view. Under the non-Bayesian and Bayesian framework, several regularization quantile regression methods are systematically compared for error terms with different distributions and heteroscedasticity. Under the error term of asymmetric Laplace distribution, statistical simulation results show that the Bayesian regularized quantile regression is superior to other distributions in all quantiles. And based on the asymmetric Laplace distribution, the Bayesian regularized quantile regression approach performs better than the non-Bayesian approach in parameter estimation and prediction. Through real data analyses, we also confirm the above conclusions.

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Tang, Q. , Zhang, H. and Gong, S. (2020) Bayesian Regularized Quantile Regression Analysis Based on Asymmetric Laplace Distribution. Journal of Applied Mathematics and Physics, 8, 70-84. doi: 10.4236/jamp.2020.81006.

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