Journal of Jilin University Science Edition ›› 2024, Vol. 62 ›› Issue (5): 1102-1112.
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HUANG Xiaofeng, ZOU Yuhao, YUAN Xiaohui
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Abstract: For the high-dimensional quantile regression model with massive data, firstly, a subsampling algorithm based on the decorrelation score function was constructed to estimate the low-dimensional parameters of interest. Secondly, we derived the limit distribution of the proposed estimates and calculated the subsampling probability under the L-optimal criterion according to the asymptotic covariance matrix, giving an efficient two-step algorithm. The simulation and empirical analysis results show that the optimal subsampling method is significantly superior to the uniform subsampling method.
Key words: decorrelation score, high-dimensional, massive data, quantile regression, subsampling
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HUANG Xiaofeng, ZOU Yuhao, YUAN Xiaohui. Subsampling Algorithm for Quantile Regression Based on Optimal Decorrelation Score[J].Journal of Jilin University Science Edition, 2024, 62(5): 1102-1112.
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