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重新审视高斯连接函数以处理内生回归变量

Revisiting Gaussian copulas to handle endogenous regressors

Journal of the Academy of Marketing Science · 2021
被引 269 · 同刊同年前 5%
人大 AFT50ABS 4*

中文导读

研究了高斯连接函数在带截距回归和多层模型中的应用,发现小样本或假设不满足时存在偏差和统计效力问题,并提出了边界条件和使用指南。

Abstract

Abstract Marketing researchers are increasingly taking advantage of the instrumental variable (IV)-free Gaussian copula approach. They use this method to identify and correct endogeneity when estimating regression models with non-experimental data. The Gaussian copula approach’s original presentation and performance demonstration via a series of simulation studies focused primarily on regression models without intercept. However, marketing and other disciplines’ researchers mainly use regression models with intercept. This research expands our knowledge of the Gaussian copula approach to regression models with intercept and to multilevel models. The results of our simulation studies reveal a fundamental bias and concerns about statistical power at smaller sample sizes and when the approach’s primary assumptions are not fully met. This key finding opposes the method’s potential advantages and raises concerns about its appropriate use in prior studies. As a remedy, we derive boundary conditions and guidelines that contribute to the Gaussian copula approach’s proper use. Thereby, this research contributes to ensuring the validity of results and conclusions of empirical research applying the Gaussian copula approach.

市场营销计量经济学回归分析内生性高斯连接函数