Journal of Jilin University Science Edition ›› 2025, Vol. 63 ›› Issue (5): 1313-1324.
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DONG Xiaogang, YE Panpan, YUAN Xiaohui, SUN Changzhi
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Abstract: Aiming at the problem of modeling mixed frequency data, we proposed an autoregressive U-MIDAS (unrestricted mixed data sampling) quantile regression model. Firstly, we combined the nested Lasso penalty method and the spike-and-slab prior for Bayesian parameter estimation and variable selection. Secondly, the superiority of this method was proved by numerical simulations. Finally, this method was applied to predict the annualized quarterly growth rate of nominal gross domestic product (GDP) in the United States. The results show that the proposed method has good prediction accuracy.
Key words: mixed frequency data, autoregressive U-MIDAS quantile regression model, Bayesian analysis, nested Lasso penalty
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DONG Xiaogang, YE Panpan, YUAN Xiaohui, SUN Changzhi. Bayesian Analysis of Quantile Regression Model for Mixed Frequency Data[J].Journal of Jilin University Science Edition, 2025, 63(5): 1313-1324.
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http://xuebao.jlu.edu.cn/lxb/EN/Y2025/V63/I5/1313
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