Beyond addressing multicollinearity: Robust quantitative analysis and machine learning in international business research

成果类型:
Editorial Material
署名作者:
Lindner, Thomas; Puck, Jonas; Verbeke, Alain
署名单位:
University of Innsbruck; Vienna University of Economics & Business; University of Calgary; University of Reading; Vrije Universiteit Brussel
刊物名称:
JOURNAL OF INTERNATIONAL BUSINESS STUDIES
ISSN/ISSBN:
0047-2506
DOI:
10.1057/s41267-022-00549-z
发表日期:
2022
页码:
1307-1314
关键词:
multicollinearity regression analysis Machine Learning
摘要:
We reconcile the recommendations made by Kalnins (J Int Bus Stud, 2022) on the one hand and by Lindner, Puck and Verbeke (J Int Bus Stud 51(3):283-298, 2020) on the other, on how international business (IB) quantitative researchers should treat multicollinearity. We explain that, in principle, treatment depends on the underlying data generation process, but note that datasets based on any single generation process are rare. In doing so, we broaden the discussion to include how research methods should be selected and robust statistical models built. In addition, we highlight the importance of a comprehensive literature review in selecting appropriate control variables. We also make suggestions on addressing cross-level dependencies and selecting robustness checks to avoid bias in statistical results. Finally, we go beyond regression and include a broader palette of research methodologies building on machine-learning approaches.