This article revises the popular issue of collinearity amongst explanatory variables in the context of a multiple linear regression analysis, particularly in empirical studies within social science related fields. Some important interpretations and explanations are highlighted from the econometrics literature with respect to the effects of multicollinearity on statistical inference, as well as the general shortcomings of the once fervent search for methods intended to detect and mitigate these effects. Consequently, it is argued and demonstrated through simulation how these views may be resolved against an alternative methodology by integrating a researcher’s subjective information in a formal and systematic way through a Bayesian approach
State politics scholars often confront data situations where explanatory variables in a model are hi...
The problem of multicollinearity compromises the numerical stability of the regression coefficient e...
In regression analysis it is obvious to have a correlation between the response and predictor(s), bu...
This article revises the popular issue of collinearity amongst explanatory variables in the context ...
Multicollinearity in linear regression is typically thought of as a problem of large standard errors...
In econometric models, linear regressions with three explanatory variables are widely used. As examp...
Testing for collinearity continues to be a controversial issue in the literature. Multicollinearity ...
In this study, the effect of different patterns of high leverages on the classical multicollinearity...
The adverse impact of ignoring multicollinearity on findings and data interpretation in regression a...
The performances of two biased estimators for the general linear regression model under conditions o...
The present article discusses the role of categorical variable in the problem of multicollinearity i...
A common consideration concerning the application of multiple linear regression is the lack of indep...
Outliers in the X-direction or high leverage points are the latest known source of multicollinearity...
Multicollinearity is a statistical phenomenon in which predictor variables in a logistic regression ...
Many ecological- and individual-level analyses of voting behaviour use multiple regressions with a c...
State politics scholars often confront data situations where explanatory variables in a model are hi...
The problem of multicollinearity compromises the numerical stability of the regression coefficient e...
In regression analysis it is obvious to have a correlation between the response and predictor(s), bu...
This article revises the popular issue of collinearity amongst explanatory variables in the context ...
Multicollinearity in linear regression is typically thought of as a problem of large standard errors...
In econometric models, linear regressions with three explanatory variables are widely used. As examp...
Testing for collinearity continues to be a controversial issue in the literature. Multicollinearity ...
In this study, the effect of different patterns of high leverages on the classical multicollinearity...
The adverse impact of ignoring multicollinearity on findings and data interpretation in regression a...
The performances of two biased estimators for the general linear regression model under conditions o...
The present article discusses the role of categorical variable in the problem of multicollinearity i...
A common consideration concerning the application of multiple linear regression is the lack of indep...
Outliers in the X-direction or high leverage points are the latest known source of multicollinearity...
Multicollinearity is a statistical phenomenon in which predictor variables in a logistic regression ...
Many ecological- and individual-level analyses of voting behaviour use multiple regressions with a c...
State politics scholars often confront data situations where explanatory variables in a model are hi...
The problem of multicollinearity compromises the numerical stability of the regression coefficient e...
In regression analysis it is obvious to have a correlation between the response and predictor(s), bu...