在高维环境中有效的同时推理(使用R的HDM包)

Philipp Bach, V. Chernozhukov, M. Spindler
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引用次数: 5

摘要

由于在许多研究学科中高维经验应用的不断增加,有效的同时推理变得越来越重要。例如,在经济研究中,由于具有许多潜在协变量的非常丰富的数据集或在治疗异质性分析中,可能会出现高维设置。此外,对回归关系的潜在更复杂(非线性)函数形式的评估会导致许多潜在的变量,这些变量可能对同时推理陈述感兴趣。在这里,我们提供了(高维)设置中同步推理的经典和现代方法的回顾,并通过使用R包hdm的案例研究说明了它们的使用。R包hdm实现了对潜在大量系数的有效联合、强大和高效的假设检验,以及同时置信区间的构建,因此,提供了基于LASSO进行有效选择后推理的有用方法。
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Valid simultaneous inference in high-dimensional settings (with the HDM package for R)
Due to the increasing availability of high-dimensional empirical applications in many research disciplines, valid simultaneous inference becomes more and more important. For instance, high-dimensional settings might arise in economic studies due to very rich data sets with many potential covariates or in the analysis of treatment heterogeneities. Also the evaluation of potentially more complicated (non-linear) functional forms of the regression relationship leads to many potential variables for which simultaneous inferential statements might be of interest. Here we provide a review of classical and modern methods for simultaneous inference in (high-dimensional) settings and illustrate their use by a case study using the R package hdm. The R package hdm implements valid joint powerful and efficient hypothesis tests for a potentially large number of coeffcients as well as the construction of simultaneous confidence intervals and, therefore, provides useful methods to perform valid post-selection inference based on the LASSO.
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