Distributed Bootstrap Simultaneous Inference for High-Dimensional Quantile Regression

Xingcai Zhou, Zhaoyang Jing,Chao Huang

MATHEMATICS(2024)

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摘要
Modern massive data with enormous sample size and tremendous dimensionality are usually impossible to process with a single machine. They are typically stored and processed in a distributed manner. In this paper, we propose a distributed bootstrap simultaneous inference for a high-dimensional quantile regression model using massive data. Meanwhile, a communication-efficient (CE) distributed learning algorithm is developed via the CE surrogate likelihood framework and ADMM procedure, which can handle the non-smoothness of the quantile regression loss and the Lasso penalty. We theoretically prove the convergence of the algorithm and establish a lower bound on the number of communication rounds iota min that warrant statistical accuracy and efficiency. The distributed bootstrap validity and efficiency are corroborated by an extensive simulation study.
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关键词
distributed statistical learning,multiplier bootstrap,quantile regression,communication efficiency,ADMM algorithm
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