加性模型中一次一个协变量的多重检验变量选择方法

A one-covariate-at-a-time multiple testing approach to variable selection in additive models

Econometric Reviews · 2024
被引 2
人大 A-ABS 3

中文导读

提出一种一次只检验一个协变量的多重检验方法,用于高维非参数加性回归模型中的变量选择,通过模拟和迁移调查数据验证其有效性。

Abstract

.This article proposes a One-Covariate-at-a-time Multiple Testing (OCMT) approach to choose significant variables in high-dimensional nonparametric additive regression models. Similarly to Chudik, Kapetanios, and Pesaran, we consider the statistical significance of individual nonparametric additive components one at a time and take into account the multiple testing nature of the problem. Both one-stage and multiple-stage procedures are considered. The former works well in terms of the true positive rate only if the net effects of all signals are strong enough; the latter helps to pick up hidden signals that have weak net effects. Simulations demonstrate the good finite-sample performance of the proposed procedures. As an empirical illustration, we apply the OCMT procedure to a dataset extracted from the Longitudinal Survey on Rural Urban Migration in China. We find that our procedure works well in terms of out-of-sample root mean square forecast errors, compared with competing methods such as adaptive group Lasso (AGLASSO).

高维非参数可加模型变量选择多重检验OCMT方法