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首页> 外文期刊>Journal of the American statistical association >Information-Based Optimal Subdata Selection for Big Data Linear Regression
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Information-Based Optimal Subdata Selection for Big Data Linear Regression

机译:基于信息的大数据线性回归的最优子数据选择

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Extraordinary amounts of data are being produced in many branches of science. Proven statistical methods are no longer applicable with extraordinary large datasets due to computational limitations. A critical step in big data analysis is data reduction. Existing investigations in the context of linear regression focus on subsampling-based methods. However, not only is this approach prone to sampling errors, it also leads to a covariance matrix of the estimators that is typically bounded from below by a term that is of the order of the inverse of the subdata size. We propose a novel approach, termed information-based optimal subdata selection (IBOSS). Compared to leading existing subdata methods, the IBOSS approach has the following advantages: (i) it is significantly faster; (ii) it is suitable for distributed parallel computing; (iii) the variances of the slope parameter estimators converge to 0 as the full data size increases even if the subdata size is fixed, that is, the convergence rate depends on the full data size; (iv) data analysis for IBOSS subdata is straightforward and the sampling distribution of an IBOSS estimator is easy to assess. Theoretical results and extensive simulations demonstrate that the IBOSS approach is superior to subsampling-based methods, sometimes by orders of magnitude. The advantages of the new approach are also illustrated through analysis of real data. Supplementary materials for this article are available online.
机译:在许多科学分支中都会产生非凡的数据。由于计算限制,已验证的统计方法不再适用于非凡的大数据集。大数据分析中的关键步骤是数据减少。线性回归背景下存在对基于子采样的方法的研究。然而,不仅是这种方法容易对采样错误,它还导致估计器的协方差矩阵,其通常由下面的术语界定为子数据大小的倒数的术语。我们提出了一种新颖的方法,称为基于信息的最佳子数据选择(IBOSS)。与领先的现有子数据方法相比,IBOSS方法具有以下优点:(i)它明显更快; (ii)它适用于分布式平行计算; (iii)随着SubData大小固定的完整数据大小增加,斜率参数估计器的差异会聚到0,即,收敛速度取决于完整数据大小; (iv)对IBOSS子数据的数据分析很简单,并且IBOSS估计器的采样分布易于评估。理论结果和广泛的模拟表明,IBOSS方法优于基于级别的方法,有时逐次数。还通过分析实际数据来说明新方法的优点。本文的补充材料在线提供。

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