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Statistical inference in massive datasets by empirical likelihood

机译:基于经验似然的海量数据集统计推断

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摘要

Abstract In this paper, we propose a new statistical inference method for massive data sets, which is very simple and efficient by combining divide-and-conquer method and empirical likelihood. Compared with two popular methods (the bag of little bootstrap and the subsampled double bootstrap), we make full use of data sets, and reduce the computation burden. Extensive numerical studies and real data analysis demonstrate the effectiveness and flexibility of our proposed method. Furthermore, the asymptotic property of our method is derived.
机译:摘要 本文将分而治之的方法与经验似然法相结合,提出了一种新的海量数据集统计推断方法,该方法非常简单高效。与两种流行的方法(小自举袋和子采样双自举)相比,我们充分利用了数据集,减轻了计算负担。大量的数值研究和实际数据分析证明了我们所提方法的有效性和灵活性。此外,还推导了我们方法的渐近性质。

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