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A New Tobit Ridge-Type Estimator of the Censored Regression Model With Multicollinearity Problem

İssam Dawoud, Mohamed R. Abonazel, Fuad A. Awwad, Elsayed Tag Eldin

2022Frontiers in Applied Mathematics and Statistics15 citationsDOIOpen Access PDF

Abstract

In the censored regression model, the Tobit maximum likelihood estimator is unstable and inefficient in the occurrence of the multicollinearity problem. To reduce this problem's effects, the Tobit ridge and the Tobit Liu estimators are proposed. Therefore, this study proposes a new kind of the Tobit estimation called the Tobit new ridge-type (TNRT) estimator. Also, the TNRT estimator was theoretically compared with the Tobit maximum likelihood, the Tobit ridge, and the Tobit Liu estimators via the mean squared error criterion. Moreover, we performed a Monte Carlo simulation to study the performance of the TNRT estimator compared with the previously defined estimators. Also, we used the Mroz dataset to confirm the theoretical and the simulation study results.

Topics & Concepts

Tobit modelMulticollinearityEstimatorMathematicsStatisticsEconometricsRegression analysisAdvanced Statistical Methods and ModelsAdvanced Statistical Process MonitoringStatistical Methods and Inference
A New Tobit Ridge-Type Estimator of the Censored Regression Model With Multicollinearity Problem | Litcius