Rejoinder to Post-selection shrinkage estimation for high-dimensional data analysis
نویسندگان
چکیده
We sincerely thank all the discussants Kjell Doksum and Joan Fujimura (DF); Jianqing Fan (Fan); Peihua Qiu, Kai Yang, and Lu You (QYY); and Yanming Li, Hyokyoung Grace Hong, and Yi Li (LHL) for the thought-provoking and insightful discussions on our paper. We would also like to thank the Editor Fabrizio Ruggeri for processing and organizing the discussion. Ahmed would like to specially thank him for his encouragement on this paper and patience.
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تاریخ انتشار 2017