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The benefit of group sparsity in group inference with de-biased scaled group Lasso

机译:小组稀疏性在无偏缩放组Lasso进行小组推理中的优势

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We study confidence regions and approximate chi-squared tests for variable groups in high-dimensional linear regression. When the size of the group is small, low-dimensional projection estimators for individual coefficients can be directly used to construct efficient confidence regions and p-values for the group. However, the existing analyses of low-dimensional projection estimators do not directly carry through for chi-squared-based inference of a large group of variables without inflating the sample size by a factor of the group size. We propose to de-bias a scaled group Lasso for chi-squared-based statistical inference for potentially very large groups of variables. We prove that the proposed methods capture the benefit of group sparsity under proper conditions, for statistical inference of the noise level and variable groups, large and small. Such benefit is especially strong when the group size is large.
机译:我们研究高维线性回归中变量组的置信区域和近似卡方检验。当组的大小较小时,可以直接使用各个系数的低维投影估计量来构建组的有效置信区域和p值。但是,现有的低维投影估计量分析并不能直接进行大变量组的基于卡方的推论,而不会使样本大小因组大小而膨胀。我们建议对可能的非常大的变量组进行基于卡方统计推断的缩放组Lasso进行反偏。我们证明了所提出的方法在适当条件下捕获了稀疏性的好处,用于统计推断噪声水平和可变组的大小。当小组人数很大时,这种好处尤其明显。

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