The adverse impact of ignoring multicollinearity on findings and data interpretation in regression analysis is very well documented in the statistical literature. The failure to identify and report multicollinearity could result in misleading interpretations of the results. A review of epidemiological literature in PubMed from January 2004 to December 2013, illustrated the need for a greater attention to identifying and minimizing the effect of multicollinearity in analysis of data from epidemiologic studies. We used simulated datasets and real life data from the Cameron County Hispanic Cohort to demonstrate the adverse effects of multicollinearity in the regression analysis and encourage researchers to consider the diagnostic for multicoll...
In epidemiological studies, it is one common issue that the collected data may not be perfect due to...
While multicollinearity may increase the difficulty of interpreting multiple regression results, it ...
Multicollinearity in linear regression is typically thought of as a problem of large standard errors...
Regression analysis is a widely used approach in epidemiological analyses to investigate association...
In regression analysis it is obvious to have a correlation between the response and predictor(s), bu...
This article argues that rather than using one technique to investigate regression results, research...
The precision of the estimates of the regression coefficients in a regression analysis is affected b...
The present Monte Carlo simulation study adds to the literature by analyzing parameter bias, rates o...
This article revises the popular issue of collinearity amongst explanatory variables in the context ...
The present article discusses the role of categorical variable in the problem of multicollinearity i...
Background Epidemiologists are generally interested in the effect of an exposure on an outcome. This...
This paper demonstrates that measurement error can conspire with multicollinearity among explanatory...
Quantitative treatment of uncontrolled bias in observational research is a neglected matter. In the...
Multicollinearity is one of several problems confronting researchers using regression analysis. This...
A common consideration concerning the application of multiple linear regression is the lack of indep...
In epidemiological studies, it is one common issue that the collected data may not be perfect due to...
While multicollinearity may increase the difficulty of interpreting multiple regression results, it ...
Multicollinearity in linear regression is typically thought of as a problem of large standard errors...
Regression analysis is a widely used approach in epidemiological analyses to investigate association...
In regression analysis it is obvious to have a correlation between the response and predictor(s), bu...
This article argues that rather than using one technique to investigate regression results, research...
The precision of the estimates of the regression coefficients in a regression analysis is affected b...
The present Monte Carlo simulation study adds to the literature by analyzing parameter bias, rates o...
This article revises the popular issue of collinearity amongst explanatory variables in the context ...
The present article discusses the role of categorical variable in the problem of multicollinearity i...
Background Epidemiologists are generally interested in the effect of an exposure on an outcome. This...
This paper demonstrates that measurement error can conspire with multicollinearity among explanatory...
Quantitative treatment of uncontrolled bias in observational research is a neglected matter. In the...
Multicollinearity is one of several problems confronting researchers using regression analysis. This...
A common consideration concerning the application of multiple linear regression is the lack of indep...
In epidemiological studies, it is one common issue that the collected data may not be perfect due to...
While multicollinearity may increase the difficulty of interpreting multiple regression results, it ...
Multicollinearity in linear regression is typically thought of as a problem of large standard errors...