Asar, Yasin2024-02-232024-02-2320161538-9472https://hdl.handle.net/20.500.12452/17826Multicollinearity in logistic regression affects the variance of the maximum likelihood estimator negatively. In this study, Liu-type estimators are used to reduce the variance and overcome the multicollinearity by applying some existing ridge regression estimators to the case of logistic regression model. A Monte Carlo simulation is given to evaluate the performances of these estimators when the optimal shrinkage parameter is used in the Liutype estimators, along with an application of real case data.eninfo:eu-repo/semantics/closedAccessLogistic RegressionMulticollinearityMaximum LikelihoodMseLiu-Type EstimatorLiu-Type Logistic Estimators with Optimal Shrinkage ParameterArticle1517387512-s2.0-84975263295Q4WOS:000411568100035