Collinearity diagnostics of binary logistic regression model
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Abstract
Abstract Multicollinearity is a statistical phenomenon in which predictor variables in a logistic regression model are highly correlated. It is not uncommon when there are a large number of covariates in the model. Multicollinearity has been the thousand pounds monster in statistical modeling. Taming this monster has proven to be one of the great challenges of statistical modeling research. Multicollinearity can cause unstable estimates and inaccurate variances which affects confidence intervals and hypothesis tests. The existence of collinearity inflates the variances of the parameter estimates, and consequently incorrect inferences about relationships between explanatory and response variables. Examining the…
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Topics
Keywords
- Multicollinearity
- Collinearity
- Variance inflation factor
- Statistics
- Logistic regression
- Mathematics
- Econometrics
- Covariate
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