TY - JOUR
T1 - Misconceptions about Multicollinearity in International Business Research
T2 - Identification, Consequences, and Remedies
AU - Lindner, Thomas
AU - Puck, Jonas
AU - Verbeke, Alain
PY - 2020/4
Y1 - 2020/4
N2 - Collinearity between independent variables is a recurrent problem in
quantitative empirical research in International Business (IB). We
explore insufficient and inappropriate treatment of collinearity and use
simulations to illustrate the potential impact on results. We also show
how IB researchers doing quantitative work can avoid collinearity
issues that lead to spurious and unstable results. Our six principal
insights are the following: first, multicollinearity does not introduce
bias. It is not an econometric problem in the sense that it would
violate assumptions necessary for regression models to work. Second,
variance inflation factors are indicators of standard errors that are
too large, not too small. Third, coefficient instability is not a
consequence of multicollinearity. Fourth, in the presence of a higher
partial correlation between the variables, it can paradoxically become
more problematic to omit one of these variables. Fifth, ignoring
clusters in data can lead to spurious results. Sixth, accounting for
country clusters does not pick up all country-level variation.
AB - Collinearity between independent variables is a recurrent problem in
quantitative empirical research in International Business (IB). We
explore insufficient and inappropriate treatment of collinearity and use
simulations to illustrate the potential impact on results. We also show
how IB researchers doing quantitative work can avoid collinearity
issues that lead to spurious and unstable results. Our six principal
insights are the following: first, multicollinearity does not introduce
bias. It is not an econometric problem in the sense that it would
violate assumptions necessary for regression models to work. Second,
variance inflation factors are indicators of standard errors that are
too large, not too small. Third, coefficient instability is not a
consequence of multicollinearity. Fourth, in the presence of a higher
partial correlation between the variables, it can paradoxically become
more problematic to omit one of these variables. Fifth, ignoring
clusters in data can lead to spurious results. Sixth, accounting for
country clusters does not pick up all country-level variation.
KW - Collinearity
KW - Hierarchical modeling
KW - Multicollinearity
KW - Quantitative research methods
KW - Regression analysis
KW - Multicollinearity
KW - Collinearity
KW - Regression analysis
KW - Hierarchical modeling
KW - Quantitative research methods
U2 - 10.1057/s41267-019-00257-1
DO - 10.1057/s41267-019-00257-1
M3 - Editorial
AN - SCOPUS:85070223663
SN - 0047-2506
VL - 51
SP - 283
EP - 298
JO - Journal of International Business Studies
JF - Journal of International Business Studies
IS - 3
ER -