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Valid simultaneous inference in high-dimensional settings (with the HDM package for R)
Author(s) -
Victor Chernozhukov,
Martin Spindler,
Philipp Bach
Publication year - 2019
Publication title -
econometrics
Language(s) - English
Resource type - Reports
DOI - 10.1920/wp.cem.2019.3019
Subject(s) - inference , r package , lasso (programming language) , computer science , covariate , selection (genetic algorithm) , statistical inference , machine learning , high dimensional , econometrics , data mining , artificial intelligence , mathematics , statistics , programming language
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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