高维线性回归模型中变量选择的单协变量多次检验方法:一项狭义复制

A one covariate at a time, multiple testing approach to variable selection in high‐dimensional linear regression models: A replication in a narrow sense

Journal of Applied Econometrics · 2021
被引 3
人大 AABS 3

中文导读

使用Stata软件复制了Chudik等人提出的高维线性回归变量选择方法(OCMT),蒙特卡洛模拟结果与原MATLAB结果高度一致,实证部分也精确复现了其前五变量发现。

Abstract

Summary Chudik, Kapetanios, & Pesaran (Econometrica 2018, 86, 1479‐1512) propose a one covariate at a time, multiple testing (OCMT) approach to variable selection in high‐dimensional linear regression models as an alternative approach to penalised regression. We offer a narrow replication of their key OCMT results based on the Stata software instead of the original MATLAB routines. Using the new user‐written Stata commands baing and ocmt , we find results that match closely those reported by these authors in their Monte Carlo simulations. In addition, we replicate exactly their findings in the empirical illustration, which relate to top five variables with highest inclusion frequencies based on the OCMT selection method.

高维线性回归变量选择多重检验OCMT方法