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A High-dimensional Focused Information Criterion

机译:高维聚焦信息准则

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摘要

The focused information criterion for model selection is constructed to select the model that best estimates a particular quantity of interest, the focus, in terms of mean squared error. We extend this focused selection process to the high-dimensional regression setting with potentially a larger number of parameters than the size of the sample. We distinguish two cases: (i) the case where the considered submodel is of low dimension and (ii) the case where it is of high dimension. In the former case, we obtain an alternative expression of the low-dimensional focused information criterion that can directly be applied. In the latter case, we use a desparsified estimator that allows us to derive the mean squared error of the focus estimator. We illustrate the performance of the high-dimensional focused information criterion with a numerical study and a real dataset.
机译:构造了用于模型选择的集中信息标准,以选择根据均方误差来最佳估计特定兴趣量(即焦点)的模型。我们将这种集中的选择过程扩展到具有比样本大小更大的参数数量的高维回归设置。我们区分两种情况:(i)所考虑的子模型是低维的情况和(ii)子模型是高维的情况。在前一种情况下,我们获得了可以直接应用的低维聚焦信息标准的替代表达。在后一种情况下,我们使用了一个简化的估计器,该估计器使我们能够得出焦点估计器的均方误差。我们通过数值研究和真实数据集说明了高维聚焦信息准则的性能。

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