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DISTRIBUTED INFERENCE FOR QUANTILE REGRESSION PROCESSES

机译:分布式推理量级回归过程

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摘要

The increased availability of massive data sets provides a unique opportunity to discover subtle patterns in their distributions, but also imposes overwhelming computational challenges. To fully utilize the information contained in big data, we propose a two-step procedure: (i) estimate conditional quantile functions at different levels in a parallel computing environment; (ii) construct a conditional quantile regression process through projection based on these estimated quantile curves. Our general quantile regression framework covers both linear models with fixed or growing dimension and series approximation models. We prove that the proposed procedure does not sacrifice any statistical inferential accuracy provided that the number of distributed computing units and quantile levels are chosen properly. In particular, a sharp upper bound for the former and a sharp lower bound for the latter are derived to capture the minimal computational cost from a statistical perspective. As an important application, the statistical inference on conditional distribution functions is considered. Moreover, we propose computationally efficient approaches to conducting inference in the distributed estimation setting described above. Those approaches directly utilize the availability of estimators from subsamples and can be carried out at almost no additional computational cost. Simulations confirm our statistical inferential theory.
机译:增加的大规模数据集的可用性提供了一个独特的机会,可以在其分布中发现微妙的模式,但也强烈地施加了压倒性的计算挑战。为了充分利用大数据中包含的信息,我们提出了一个两步的过程:(i)在并行计算环境中估计不同级别的条件分位数函数; (ii)通过基于这些估计的定量曲线的投影来构造条件分位数回归过程。我们的总量值回归框架涵盖了具有固定或不断增长的尺寸和串联近似模型的线性模型。我们证明了所提出的程序不会牺牲任何统计推理准确性,条件是正确选择分布式计算单元和量子水平的数量。特别地,导出前者的锋利的上限和后者的急剧下限,以捕获统计角度来捕获最小的计算成本。作为一个重要的应用,考虑了条件分布函数的统计推断。此外,我们提出了在上述分布式估计设置中对推断进行了计算的有效方法。这些方法直接利用来自子样本的估计器的可用性,并且可以几乎没有额外的计算成本进行。仿真确认了我们的统计推理理论。

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