The paper demonstrates that autocorrelation is an accidental statistical phenomenon, whose origin is the incomplete data base. It also shows that the attempts to redistribute factors interactions have focused on the development of methods of solving the effect rather than identifying the cause that generates collinearity. Three possible methods for collinearity removal are analysed comparatively. The premise for two of these methods is autocorrelation redistribution, and the third reveals the cause of collinearity and, implicitly, its cancellation. The three methods are named as follows: 1. Classic method [1,7]; 2. Method of Merce E., Merce C.C.[6]; 3. Method of Merce E., Merce C.C.[5] 3. Method of Merce E., Merce C.C.[5; It is demonstr...
This paper re-examines changes in the causal link between money and income in the United States for ...
In this study, the effect of different patterns of high leverages on the classical multicollinearity...
Collinearity amongst covariates in linear regression models has long been recognised as a potential ...
The paper demonstrates that autocorrelation is an accidental statistical phenomenon, whose origin is...
The elaboration is devoted to the problems of variables collinearity and its repercussions for a st...
Collinearity plays an integral role in regression studies involving epidemiological data. Variables ...
The article offers a critical discussion of the moist important Polish and foreign trends in resear...
BACKGROUND: Correlated data are ubiquitous in epidemiologic research, particularly in nutritional an...
Collinearity plays an integral role in regression studies involving epidemiological data. Variables ...
In econometric models, linear regressions with three explanatory variables are widely used. As examp...
This article revises the popular issue of collinearity amongst explanatory variables in the context ...
This companion paper to Chatelain and Ralf (2012), “Spurious regressions with near-multicollinearity...
The main cause of autocorrelation is omitted variables from the model. When an important independent...
Many ecological- and individual-level analyses of voting behaviour use multiple regressions with a c...
International audienceThere are many statistical problems connected with (almost) collinearity among...
This paper re-examines changes in the causal link between money and income in the United States for ...
In this study, the effect of different patterns of high leverages on the classical multicollinearity...
Collinearity amongst covariates in linear regression models has long been recognised as a potential ...
The paper demonstrates that autocorrelation is an accidental statistical phenomenon, whose origin is...
The elaboration is devoted to the problems of variables collinearity and its repercussions for a st...
Collinearity plays an integral role in regression studies involving epidemiological data. Variables ...
The article offers a critical discussion of the moist important Polish and foreign trends in resear...
BACKGROUND: Correlated data are ubiquitous in epidemiologic research, particularly in nutritional an...
Collinearity plays an integral role in regression studies involving epidemiological data. Variables ...
In econometric models, linear regressions with three explanatory variables are widely used. As examp...
This article revises the popular issue of collinearity amongst explanatory variables in the context ...
This companion paper to Chatelain and Ralf (2012), “Spurious regressions with near-multicollinearity...
The main cause of autocorrelation is omitted variables from the model. When an important independent...
Many ecological- and individual-level analyses of voting behaviour use multiple regressions with a c...
International audienceThere are many statistical problems connected with (almost) collinearity among...
This paper re-examines changes in the causal link between money and income in the United States for ...
In this study, the effect of different patterns of high leverages on the classical multicollinearity...
Collinearity amongst covariates in linear regression models has long been recognised as a potential ...