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A Note on High-Dimensional Linear Regression With Interactions

机译:关于相互作用的高维线性回归的一个注记

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摘要

The problem of interaction selection in high-dimensional data analysis has recently received much attention. This note aims to address and clarify several fundamental issues in interaction selection for linear regression models, especially when the input dimension p is much larger than the sample size n. We first discuss how to give a formal definition of "importance" for main and interaction effects. Then we focus on two-stage methods, which are computationally attractive for high-dimensional data analysis but thus far have been regarded as heuristic. We revisit the counterexample of Turlach and provide new insight to justify two-stage methods from the theoretical perspective. In the end, we suggest new strategies for interaction selection under the marginality principle and provide some simulation results.
机译:高维数据分析中的交互选择问题最近受到了广泛关注。本说明旨在解决和阐明线性回归模型的交互选择中的几个基本问​​题,尤其是当输入维p远大于样本大小n时。我们首先讨论如何对主要效应和相互作用效应给出“重要性”的正式定义。然后,我们重点介绍两阶段方法,该方法在计算上对高维数据分析具有吸引力,但到目前为止已被视为启发式方法。我们重新审视了Turlach的反例,并提供了新的见识以从理论角度证明两阶段方法的合理性。最后,我们提出了一种基于边际原则的交互选择新策略,并提供了一些仿真结果。

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