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.

Highlights

  • Endogeneity is a key concern when using regression models in marketing studies with non-experimental data (Rutz & Watson, 2019; Sande & Ghosh, 2018)

  • We find that the Gaussian copula approach accounts for the endogeneity problem and estimates the endogenous regressor’s coefficient without noticeable bias, regardless of the sample size and the estimation method used (Fig. 2 shows the results of the more popular control function approach; Web Appendix 2, Table WA.2.1, provides the outcomes of the maximum likelihood approach)

  • The situation changes fundamentally when we extend P&G's simulation study by estimating a regression model with intercept

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Summary

Introduction

Endogeneity is a key concern when using regression models in marketing studies with non-experimental data (Rutz & Watson, 2019; Sande & Ghosh, 2018). Marketing literature has extensively discussed methods of dealing with endogeneity (e.g., Rutz & Watson, 2019; Sande & Ghosh, 2018; Zaefarian et al, 2017). Of these methods, the use of instrumental variables (IVs) is well-known for addressing endogeneity problems (Wooldridge, 2010). Researchers often fail to revert to suitable variables whose appropriateness as instruments they

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