Javascript must be enabled to continue!
Dawoud–Kibria Estimator for Beta Regression Model: Simulation and Application
View through CrossRef
The linear regression model becomes unsuitable when the response variable is expressed as percentages, proportions, and rates. The beta regression (BR) model is more appropriate for the variable of this form. The BR model uses the conventional maximum likelihood estimator (BML), and this estimator may not be efficient when the regressors are linearly dependent. The beta ridge estimator was suggested as an alternative to BML in the literature. In this study, we developed the Dawoud–Kibria estimator to handle multicollinearity in the BR model. The properties of the new estimator are derived. We compared the performance of the estimator with the existing estimators theoretically using the mean squared error criterion. A Monte Carlo simulation and a real-life application were carried out to show the benefits of the proposed estimator. The theoretical comparison, simulation, and real-life application results revealed the superiority of the proposed estimator.
Title: Dawoud–Kibria Estimator for Beta Regression Model: Simulation and Application
Description:
The linear regression model becomes unsuitable when the response variable is expressed as percentages, proportions, and rates.
The beta regression (BR) model is more appropriate for the variable of this form.
The BR model uses the conventional maximum likelihood estimator (BML), and this estimator may not be efficient when the regressors are linearly dependent.
The beta ridge estimator was suggested as an alternative to BML in the literature.
In this study, we developed the Dawoud–Kibria estimator to handle multicollinearity in the BR model.
The properties of the new estimator are derived.
We compared the performance of the estimator with the existing estimators theoretically using the mean squared error criterion.
A Monte Carlo simulation and a real-life application were carried out to show the benefits of the proposed estimator.
The theoretical comparison, simulation, and real-life application results revealed the superiority of the proposed estimator.
Related Results
Generalized Estimator of Population Variance utilizing Auxiliary Information in Simple Random Sampling Scheme
Generalized Estimator of Population Variance utilizing Auxiliary Information in Simple Random Sampling Scheme
In this study, using the Simple Random Sampling without Replacement (SRSWOR) method, we propose a generalized estimator of population variance of the primary variable. Up to the fi...
Role of T cell receptor V beta genes in Theiler's virus-induced demyelination of mice.
Role of T cell receptor V beta genes in Theiler's virus-induced demyelination of mice.
Abstract
Intracerebral infection of certain strains of mice with Theiler's virus results in chronic immune-mediated demyelination in spinal cord. We used mouse mutan...
K-L Estimator: Dealing with Multicollinearity in the Logistic Regression Model
K-L Estimator: Dealing with Multicollinearity in the Logistic Regression Model
Multicollinearity negatively affects the efficiency of the maximum likelihood estimator (MLE) in both the linear and generalized linear models. The Kibria and Lukman estimator (KLE...
Quality of life and its association with current substance use, medication non-adherence and clinical factors of people with schizophrenia in Southwest Ethiopia: a hospital-based cross-sectional study
Quality of life and its association with current substance use, medication non-adherence and clinical factors of people with schizophrenia in Southwest Ethiopia: a hospital-based cross-sectional study
Abstract
Background
Schizophrenia was ranked as one of the top ten illnesses contributing to the global burden of disease. But little is known about...
On the Efficiency of the newly Proposed Convex Olanrewaju-Olanrewaju Lo-oλγ(|θ|) Penalized Regression-Type Estimator via GLMs Technique.
On the Efficiency of the newly Proposed Convex Olanrewaju-Olanrewaju Lo-oλγ(|θ|) Penalized Regression-Type Estimator via GLMs Technique.
In this article, we proposed a novel convex penalized regression-type estimator, termed Olanrewaju-Olanrewaju penalized regression-type estimator, denoted by Lo-oλγ(|θ|) for ultra...
Almost Unbiased Liu Estimator in Bell Regression Model
Almost Unbiased Liu Estimator in Bell Regression Model
Abstract
In this research, we propose a novel regression estimator as an alternative to the Liu estimator for addressing multicollinearity in the Bell regression model, ref...
Comprehensive IsomiR sequencing profile of human pancreatic islets and EndoC-βH1 beta-cells
Comprehensive IsomiR sequencing profile of human pancreatic islets and EndoC-βH1 beta-cells
AbstractAims/HypothesisMiRNAs play a crucial role in regulating the islet transcriptome, influencing beta cell functions and pathways. Emerging evidence suggests that during biogen...
New ridge parameter estimators for the quasi-Poisson ridge regression model
New ridge parameter estimators for the quasi-Poisson ridge regression model
AbstractThe quasi-Poisson regression model is used for count data and is preferred over the Poisson regression model in the case of over-dispersed count data. The quasi-likelihood ...

