Collinearity plays an integral role in regression studies involving epidemiological data. Variables often form part of a common biological mechanism or measure the same element of a latent structure. It is a natural feature of most data and as such it is rarely possible to physically control for collinearity in data collection. A focus is placed on the analytical assessment of the data. Departures from independence can severely distort the interpretation of a model and the role of each covariate. This leads to increased inaccuracy as expressed through the regression coefficients and increased uncertainty as expressed through coefficient standard errors. Such a feature has the potential to impact on the clinical conclusions formed from regre...
peer-reviewedThe construction of classical co-morbidity indices is described. When the co-morbiditi...
In this study, the effect of different patterns of high leverages on the classical multicollinearity...
Linear regression has gained widespread popularity in the social sciences. However, many application...
Collinearity plays an integral role in regression studies involving epidemiological data. Variables ...
Survey data are often used to fit models. The values of covariates used in modeling are not controll...
Collinearity amongst covariates in linear regression models has long been recognised as a potential ...
BACKGROUND: Correlated data are ubiquitous in epidemiologic research, particularly in nutritional an...
The overall contribution of this thesis has been the application and development of growth modeling ...
Collinearity of predictor variables is a severe problem in the least square regression analysis. It ...
Objectives. To demonstrate the ineffectiveness of some commonly used collinearity diagnostics, and p...
AbstractIn this work we present a statistical approach to distinguish and interpret the complex rela...
Collinearity refers to the non independence of predictor variables, usually in a regression-type ana...
Once they have learnt about the effects of collinearity on the output of multiple regression models...
The adverse impact of ignoring multicollinearity on findings and data interpretation in regression a...
The paper demonstrates that autocorrelation is an accidental statistical phenomenon, whose origin is...
peer-reviewedThe construction of classical co-morbidity indices is described. When the co-morbiditi...
In this study, the effect of different patterns of high leverages on the classical multicollinearity...
Linear regression has gained widespread popularity in the social sciences. However, many application...
Collinearity plays an integral role in regression studies involving epidemiological data. Variables ...
Survey data are often used to fit models. The values of covariates used in modeling are not controll...
Collinearity amongst covariates in linear regression models has long been recognised as a potential ...
BACKGROUND: Correlated data are ubiquitous in epidemiologic research, particularly in nutritional an...
The overall contribution of this thesis has been the application and development of growth modeling ...
Collinearity of predictor variables is a severe problem in the least square regression analysis. It ...
Objectives. To demonstrate the ineffectiveness of some commonly used collinearity diagnostics, and p...
AbstractIn this work we present a statistical approach to distinguish and interpret the complex rela...
Collinearity refers to the non independence of predictor variables, usually in a regression-type ana...
Once they have learnt about the effects of collinearity on the output of multiple regression models...
The adverse impact of ignoring multicollinearity on findings and data interpretation in regression a...
The paper demonstrates that autocorrelation is an accidental statistical phenomenon, whose origin is...
peer-reviewedThe construction of classical co-morbidity indices is described. When the co-morbiditi...
In this study, the effect of different patterns of high leverages on the classical multicollinearity...
Linear regression has gained widespread popularity in the social sciences. However, many application...