Litcius/Paper detail

The r-k class estimator in generalized linear models applicable with simulation and empirical study using a Poisson and Gamma responses

Atıf Abbası, M. Revan Özkale

2021Hacettepe Journal of Mathematics and Statistics14 citationsDOIOpen Access PDF

Abstract

Multicollinearity is considered to be a significant problem in the estimation of parameters not only in general linear models, but also in generalized linear models (GLMs). Thus, in order to alleviate the serious effects of multicollinearity a new estimator is proposed by combining the ridge and PCR estimators in GLMs. This new estimator is called the r-k class estimator in GLMs. The various comparisons of the new estimator are made with already existing estimators in the literature, which are maximum likelihood (ML) estimator, ridge and PCR estimators, respectively. The comparisons are to be made in terms of scalar MSE criterion. So that, a numerical example and application through simulation are mentioned in the study for Poisson and Gamma response variables, respectively. On the basis of results it is found that, the proposed estimator outperforms all of its competitors comprehensively.

Topics & Concepts

MulticollinearityMathematicsEstimatorMinimax estimatorPoisson distributionInvariant estimatorGeneralized linear modelApplied mathematicsStatisticsEfficient estimatorLinear modelMinimum-variance unbiased estimatorLinear regressionAdvanced Statistical Methods and ModelsStatistical Methods and Bayesian InferenceStatistical Methods and Inference