海量数据量化回归的分布式最优子采样

Pub Date : 2024-04-18 DOI:10.1016/j.jspi.2024.106186
Yue Chao, Xuejun Ma, Boya Zhu
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引用次数: 0

摘要

减少分布式子样本规模的方法日益成为大数据时代的热门统计问题。关于分布式数据源的海量线性模型和广义线性模型的最优子样本选择的现有工作已经得到了扎实的研究和广泛的应用。然而,很少有研究为海量数据中的量化回归开发分布式最优子样本选择程序。在这种情况下,需要同时建立分布式最优子样本概率和子集大小选择标准。在这项工作中,我们提出了一种用于量化回归模型的分布式子采样技术。该估计方法基于分布式子采样程序的两步算法。此外,我们还在一些正则条件下严格地建立了理论结果,如结果估计子的一致性和渐近正态性。在模拟实验和实际数据应用中,对所提出的子抽样方法进行了实证评估并考察了其性能。
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Distributed optimal subsampling for quantile regression with massive data

Methods for reducing distributed subsample sizes have increasingly become popular statistical problems in the big data era. Existing works of optimal subsample selection on the massive linear and generalized linear models with distributed data sources have been solidly investigated and widely applied. Nevertheless, few studies have developed distributed optimal subsample selection procedures for quantile regression in massive data. In such settings, the distributed optimal subsampling probabilities and subset sizes selection criteria need to be established simultaneously. In this work, we propose a distributed subsampling technique for the quantile regression models. The estimation approach is based on a two-step algorithm for the distributed subsampling procedures. Furthermore, the theoretical results, such as consistency and asymptotic normality of resultant estimators, are rigorously established under some regularity conditions. The empirical evaluation and performance of the proposed subsampling method are conducted in simulation experiments and real data applications.

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