Once they have learnt about the effects of collinearity on the output of multiple regression models, researchers may unduly worry about these and resort to (sometimes dubious) modelling techniques to mitigate them. I argue that, to the extent that problems occur in the presence of collinearity, they are not caused by it but rather by common mental shortcuts that researchers take when interpreting statistical models and that can also lead them astray in the absence of collinearity. Moreover, I illustrate that common strategies for dealing with collinearity only sidestep the perceived problem by biasing parameter estimates, reformulating the model in such a way that it maps onto different research questions, or both. I conclude that c...
International audienceThere are many statistical problems connected with (almost) collinearity among...
In this study, the effect of different patterns of high leverages on the classical multicollinearity...
Many ecological- and individual-level analyses of voting behaviour use multiple regressions with a c...
Collinearity refers in a strict sense to the presence of exact linear relationships within a set of ...
Collinearity amongst covariates in linear regression models has long been recognised as a potential ...
Objectives. To demonstrate the ineffectiveness of some commonly used collinearity diagnostics, and p...
Collinearity refers to the non independence of predictor variables, usually in a regression-type ana...
Collinearity plays an integral role in regression studies involving epidemiological data. Variables ...
BACKGROUND: Correlated data are ubiquitous in epidemiologic research, particularly in nutritional an...
Multicollinearity in linear regression is typically thought of as a problem of large standard errors...
The cross-product term in moderated regression may be collinear with its constituent parts, making i...
Collinearity plays an integral role in regression studies involving epidemiological data. Variables ...
This article revises the popular issue of collinearity amongst explanatory variables in the context ...
Linear regression has gained widespread popularity in the social sciences. However, many application...
Multicollinearity is a statistical phenomenon in which predictor variables in a logistic regression ...
International audienceThere are many statistical problems connected with (almost) collinearity among...
In this study, the effect of different patterns of high leverages on the classical multicollinearity...
Many ecological- and individual-level analyses of voting behaviour use multiple regressions with a c...
Collinearity refers in a strict sense to the presence of exact linear relationships within a set of ...
Collinearity amongst covariates in linear regression models has long been recognised as a potential ...
Objectives. To demonstrate the ineffectiveness of some commonly used collinearity diagnostics, and p...
Collinearity refers to the non independence of predictor variables, usually in a regression-type ana...
Collinearity plays an integral role in regression studies involving epidemiological data. Variables ...
BACKGROUND: Correlated data are ubiquitous in epidemiologic research, particularly in nutritional an...
Multicollinearity in linear regression is typically thought of as a problem of large standard errors...
The cross-product term in moderated regression may be collinear with its constituent parts, making i...
Collinearity plays an integral role in regression studies involving epidemiological data. Variables ...
This article revises the popular issue of collinearity amongst explanatory variables in the context ...
Linear regression has gained widespread popularity in the social sciences. However, many application...
Multicollinearity is a statistical phenomenon in which predictor variables in a logistic regression ...
International audienceThere are many statistical problems connected with (almost) collinearity among...
In this study, the effect of different patterns of high leverages on the classical multicollinearity...
Many ecological- and individual-level analyses of voting behaviour use multiple regressions with a c...