Distributed smoothed rank regression with heterogeneous errors for massive data

被引:0
作者
Xiaohui Yuan
Xinran Zhang
Yue Wang
Chunjie Wang
机构
[1] Changchun University of Technology,School of Mathematics and Statistics
来源
Journal of the Korean Statistical Society | 2023年 / 52卷
关键词
Heterogeneous error; Massive data; Variable selection; Weighted rank estimator;
D O I
暂无
中图分类号
学科分类号
摘要
Rank estimation methods are robust and highly efficient for estimating linear regression model. This paper investigates the rank regression estimation for massive data. To deal with the situation that the data are distributed heterogeneously in different blocks, we propose a weighted distributed rank-based estimator for massive data, which can improve the efficiency of the standard divide and conquer estimator. Under mild conditions, the asymptotic distributions of the weighted distributed rank-based estimator is derived. To achieve sparsity with high-dimensional covariates, the variable selection procedure is also proposed. Both simulations and data analysis are included to illustrate the finite sample performance of the proposed methods.
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页码:1078 / 1103
页数:25
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  • [21] Lin N(2020)K-sample anderson-darling tests Journal of Multivariate Analysis 176 104567-1048
  • [22] Yin X(2019)Distributed simultaneous inference in generalized linear models via confidence distribution The Annals of Statistics 47 1634-844
  • [23] Fu L(2007)Distributed inference for quantile regression processes Journal of the American Statistical Association 102 1039-2343
  • [24] Wang YG(2018)Unified lasso estimation by least squares approximation Journal of the American Statistical Association 113 829-332
  • [25] Huang L(2011)Optimal subsampling for large sample logistic regression Computational Statistics & Data Analysis 55 2334-492
  • [26] Kopciuk K(2006)Rank regression for accelerated failure time model with clustered and censored data Sensors and Actuators A: Physical 128 327-39
  • [27] Lu X(2009)Measurement of longitudinal piezoelectric coefficient of film with scanning-modulated interferometer IEEE Transactions on Knowledge and Sata Engineering 21 479-518
  • [28] Jung SH(2013)Compression and aggregation for logistic regression analysis in data cubes International Statistical Review 81 3-3363
  • [29] Ying Z(2017)Confidence distribution, the frequentist distribution estimator of a parameter: a review International Statistical Review 85 494-3340
  • [30] Kleiner A(2013)Admm for penalized quantile regression in big data Journal of Machine Learning Reaearch 14 3321-3755