Litcius/Paper detail

On some two parameter estimators for the linear regression models with correlated predictors: simulation and application

M. S. Khan, Amjad Ali, Muhammad Suhail, B. M. Golam Kibria

2024Communications in Statistics - Simulation and Computation11 citationsDOI

Abstract

Regression analysis is widely used to predict the response variable utilizing one or more predictor variables. In many fields of study, the predictors are highly correlated causing multicollinearity problem that severely affects the efficiency of ordinary least square (OLS) estimators by significantly inflating their variances. To solve the multicollinearity problem, various one and two parameter ridge estimators are available in literature. In this article, a class of modified two parameter Lipovetsky–Conklin ridge estimators is proposed based on eigen values of X′X matrix that provide an automatic dealing option for treating different levels of multicollinearity. An extensive simulations study followed by real life example is used to evaluate the performance of proposed estimators based on MSE criterion. In most of the simulation conditions, our proposed estimators outperformed the existing estimators.

Topics & Concepts

EstimatorLinear regressionStatisticsRegression analysisBayesian multivariate linear regressionEconometricsRegressionLinear modelProper linear modelMathematicsComputer scienceAdvanced Statistical Methods and ModelsStatistical Methods and InferenceStatistical Methods and Bayesian Inference
On some two parameter estimators for the linear regression models with correlated predictors: simulation and application | Litcius