Linear regression has gained widespread popularity in the social sciences. However, many applications of linear regression have been in situations in which the model data are collinear or ‘ill-conditioned.’ Collinearity renders regression estimates with inflated standard errors. In this paper, we present a method for precisely identifying coefficient estimates that are ill-conditioned, as well as those that are not involved, or only marginally involved in a linear dependency. Diagnostic tools are presented for a hypothetical regression model with ordinary least squares (OLS). It is hoped that practicing researchers will more readily incorporate these diagnostics into their analyses.Accessed 17,081 times on https://pareonline.net from June 1...
Includes bibliographical references (leaves 118-120)The problems of detecting influential observatio...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
Objectives. To demonstrate the ineffectiveness of some commonly used collinearity diagnostics, and p...
Collinearity refers in a strict sense to the presence of exact linear relationships within a set of ...
The problem of multicollinearity compromises the numerical stability of the regression coefficient e...
Survey data are often used to fit models. The values of covariates used in modeling are not controll...
Collinearity of predictor variables is a severe problem in the least square regression analysis. It ...
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 ...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
Collinearity plays an integral role in regression studies involving epidemiological data. Variables ...
Exact collinearity between regressors makes their individual coefficients not identified. But, given...
Once they have learnt about the effects of collinearity on the output of multiple regression models...
Collinearity amongst covariates in linear regression models has long been recognised as a potential ...
The problems of multicollinearity among the independent variables in least-squares regression are by...
Includes bibliographical references (leaves 118-120)The problems of detecting influential observatio...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
Objectives. To demonstrate the ineffectiveness of some commonly used collinearity diagnostics, and p...
Collinearity refers in a strict sense to the presence of exact linear relationships within a set of ...
The problem of multicollinearity compromises the numerical stability of the regression coefficient e...
Survey data are often used to fit models. The values of covariates used in modeling are not controll...
Collinearity of predictor variables is a severe problem in the least square regression analysis. It ...
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 ...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
Collinearity plays an integral role in regression studies involving epidemiological data. Variables ...
Exact collinearity between regressors makes their individual coefficients not identified. But, given...
Once they have learnt about the effects of collinearity on the output of multiple regression models...
Collinearity amongst covariates in linear regression models has long been recognised as a potential ...
The problems of multicollinearity among the independent variables in least-squares regression are by...
Includes bibliographical references (leaves 118-120)The problems of detecting influential observatio...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
Objectives. To demonstrate the ineffectiveness of some commonly used collinearity diagnostics, and p...