大量和分布的纵向数据的小自举包

Xinkai Zhou, Jin J. Zhou, Hua Zhou
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引用次数: 0

摘要

线性混合模型广泛用于纵向数据集的分析,其方差成分参数的推断依赖于自举法。然而,卫生系统和技术公司通常会生成大量的纵向数据集,这使得传统的自举方法不可行。为了解决这个问题,我们将高度可扩展的独立数据的小引导方法扩展到纵向数据,并开发了一个高效的Julia包MixedModelsBLB.jl。仿真实验和实际数据分析表明,与传统的自举方法相比,该方法具有良好的统计性能和计算优势。对于方差分量的统计推断,它在100万受试者(2000万总观测值)的尺度上实现了200倍的加速,是目前唯一可以使用台式计算机处理1000万受试者(2亿总观测值)以上的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bag of little bootstraps for massive and distributed longitudinal data
Linear mixed models are widely used for analyzing longitudinal datasets, and the inference for variance component parameters relies on the bootstrap method. However, health systems and technology companies routinely generate massive longitudinal datasets that make the traditional bootstrap method infeasible. To solve this problem, we extend the highly scalable bag of little bootstraps method for independent data to longitudinal data and develop a highly efficient Julia package MixedModelsBLB.jl. Simulation experiments and real data analysis demonstrate the favorable statistical performance and computational advantages of our method compared to the traditional bootstrap method. For the statistical inference of variance components, it achieves 200 times speedup on the scale of 1 million subjects (20 million total observations), and is the only currently available tool that can handle more than 10 million subjects (200 million total observations) using desktop computers.
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