The cross-product term in moderated regression may be collinear with its constituent parts, making it difficult to detect main, simple, and interaction effects. The literature shows that mean-centering can reduce the covariance between the linear and the interaction terms, thereby suggesting that it reduces collinearity. We analytically prove that mean-centering neither changes the computational precision of parameters, the sampling accuracy of main effects, simple effects, interaction effects, nor the R2. We also show that the determinants of the cross product matrix X′X are identical for uncentered and mean-centered data, so the collinearity problem in the moderated regression is unchanged by mean-centering. Many empirical marketing resea...
Mixture regression models are an important method for uncovering unobserved heterogeneity. A fundame...
The paper introduces the concept of reverse moderation in order to investigate the uniqueness of the...
In machine learning (ML) algorithms and multivariate statistical analysis (MVA) problems, it is usua...
The cross-product term in moderated regression may be collinear with its constituent parts, making i...
Mean centering is an additive transformation of a continuous variable. It is often used in moderated...
Kelley et al. argue that group-mean-centering covariates in multilevel models is dangerous, since—th...
© 2022 Elsevier Inc.It is common to assess moderation effects with moderated regression analysis. If...
Copyright © 2013 Richard B. Francoeur. This is an open access article distributed under the Creative...
Kelley at al. argue that group-mean-centering covariates in multilevel models is dangerous, since— t...
Once they have learnt about the effects of collinearity on the output of multiple regression models...
Percent increase in balanced CV prediction accuracies with mean centering. Each cell shows the CV ac...
The purpose of this investigation is to compare a new (double-mean-centering) strategy to estimating...
When the multicollinearity among the independent variables in a regression model is due to the high ...
Collinearity amongst covariates in linear regression models has long been recognised as a potential ...
The paper introduces the concept of reverse moderation in order to investigate the uniqueness of the...
Mixture regression models are an important method for uncovering unobserved heterogeneity. A fundame...
The paper introduces the concept of reverse moderation in order to investigate the uniqueness of the...
In machine learning (ML) algorithms and multivariate statistical analysis (MVA) problems, it is usua...
The cross-product term in moderated regression may be collinear with its constituent parts, making i...
Mean centering is an additive transformation of a continuous variable. It is often used in moderated...
Kelley et al. argue that group-mean-centering covariates in multilevel models is dangerous, since—th...
© 2022 Elsevier Inc.It is common to assess moderation effects with moderated regression analysis. If...
Copyright © 2013 Richard B. Francoeur. This is an open access article distributed under the Creative...
Kelley at al. argue that group-mean-centering covariates in multilevel models is dangerous, since— t...
Once they have learnt about the effects of collinearity on the output of multiple regression models...
Percent increase in balanced CV prediction accuracies with mean centering. Each cell shows the CV ac...
The purpose of this investigation is to compare a new (double-mean-centering) strategy to estimating...
When the multicollinearity among the independent variables in a regression model is due to the high ...
Collinearity amongst covariates in linear regression models has long been recognised as a potential ...
The paper introduces the concept of reverse moderation in order to investigate the uniqueness of the...
Mixture regression models are an important method for uncovering unobserved heterogeneity. A fundame...
The paper introduces the concept of reverse moderation in order to investigate the uniqueness of the...
In machine learning (ML) algorithms and multivariate statistical analysis (MVA) problems, it is usua...