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首页> 外文期刊>Statistics and computing >Data skeletons: simultaneous estimation of multiple quantiles for massive streaming datasets with applications to density estimation
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Data skeletons: simultaneous estimation of multiple quantiles for massive streaming datasets with applications to density estimation

机译:数据骨架:同时估算海量流数据集的多个分位数,并将其应用于密度估计

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摘要

We consider the problem of density estimation when the data is in the form of a continuous stream with no fixed length. In this setting, implementations of the usual methods of density estimation such as kernel density estimation are problematic. We propose a method of density estimation for massive datasets that is based upon taking the derivative of a smooth curve that has been fit through a set of quantile estimates. To achieve this, a low-storage, single pass, sequential method is proposed for simultaneous estimation of multiple quantiles for massive datasets that form the basis of this method of density estimation. For comparison, we also consider a sequential kernel density estimator. The proposed methods are shown through simulation study to perform well and to have several distinct advantages over existing methods.
机译:当数据是没有固定长度的连续流形式时,我们考虑密度估计的问题。在这种情况下,诸如内核密度估算之类的常规密度估算方法的实现是有问题的。我们提出了一种海量数据集的密度估计方法,该方法基于对已通过一组分位数估计进行拟合的平滑曲线的导数的基础。为了实现这一目标,提出了一种低存储量的单遍顺序方法,用于同时估计海量数据集的多个分位数,从而构成了该密度估计方法的基础。为了进行比较,我们还考虑了顺序核密度估计器。通过仿真研究表明,所提出的方法具有良好的性能,并且与现有方法相比具有几个明显的优势。

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