海量数据的最优子抽样引导

Yingying Ma, Chenlei Leng, Hansheng Wang
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引用次数: 1

摘要

自举法是一种被广泛使用的统计推理方法,因为它的简单性和吸引人的统计特性。然而,由于需要反复对整个数据进行重新采样,对于许多现代大规模数据集来说,香草版本的bootstrap在计算上不再可行。因此,近年来对bootstrap方法进行了一些改进,在重新采样子样本之前,通过对整个数据集进行子采样来评估估计器的质量。当然,这些现代子抽样方法的性能受到子样本大小、子样本数量和每个子样本的重样本数量等参数的调整影响。在本文中,我们开发了一种新的超参数选择方法来选择这些调谐参数。我们的框架被描述为一个优化问题,以找到受计算成本影响的估计器的某些精度度量的最优值,我们的框架为次采样自举、次采样双自举和小自举袋的最优超参数值提供了封闭形式的解决方案,没有或很少额外的时间成本。利用均方误差作为精度度量的代理,我们应用我们的方法通过仿真研究来研究、比较和改进这些针对海量数据开发的现代版本的自举性能。结果是有希望的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Subsampling Bootstrap for Massive Data
The bootstrap is a widely used procedure for statistical inference because of its simplicity and attractive statistical properties. However, the vanilla version of bootstrap is no longer feasible computationally for many modern massive datasets due to the need to repeatedly resample the entire data. Therefore, several improvements to the bootstrap method have been made in recent years, which assess the quality of estimators by subsampling the full dataset before resampling the subsamples. Naturally, the performance of these modern subsampling methods is influenced by tuning parameters such as the size of subsamples, the number of subsamples, and the number of resamples per subsample. In this paper, we develop a novel hyperparameter selection methodology for selecting these tuning parameters. Formulated as an optimization problem to find the optimal value of some measure of accuracy of an estimator subject to computational cost, our framework provides closed-form solutions for the optimal hyperparameter values for subsampled bootstrap, subsampled double bootstrap and bag of little bootstraps, at no or little extra time cost. Using the mean square errors as a proxy of the accuracy measure, we apply our methodology to study, compare and improve the performance of these modern versions of bootstrap developed for massive data through simulation study. The results are promising.
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