Bayesian Analysis of the Beta Regression Model Subject to Linear Inequality Restrictions with Application

ReRecent studies in machine learning are based on models in which parameters or state variables are bounded restricted. These restrictions are from prior information to ensure the validity of scientific theories or structural consistency based on physical phenomena. The valuable information containe...

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Main Authors Seifollahi, Solmaz, Bevrani, Hossein, Mansson, Kristofer
Format Journal Article
LanguageEnglish
Published 24.01.2024
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DOI10.48550/arxiv.2401.13787

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Abstract ReRecent studies in machine learning are based on models in which parameters or state variables are bounded restricted. These restrictions are from prior information to ensure the validity of scientific theories or structural consistency based on physical phenomena. The valuable information contained in the restrictions must be considered during the estimation process to improve estimation accuracy. Many researchers have focused on linear regression models subject to linear inequality restrictions, but generalized linear models have received little attention. In this paper, the parameters of beta Bayesian regression models subjected to linear inequality restrictions are estimated. The proposed Bayesian restricted estimator, which is demonstrated by simulated studies, outperforms ordinary estimators. Even in the presence of multicollinearity, it outperforms the ridge estimator in terms of the standard deviation and the mean squared error. The results confirm that the proposed Bayesian restricted estimator makes sparsity in parameter estimating without using the regularization penalty. Finally, a real data set is analyzed by the new proposed Bayesian estimation method.
AbstractList ReRecent studies in machine learning are based on models in which parameters or state variables are bounded restricted. These restrictions are from prior information to ensure the validity of scientific theories or structural consistency based on physical phenomena. The valuable information contained in the restrictions must be considered during the estimation process to improve estimation accuracy. Many researchers have focused on linear regression models subject to linear inequality restrictions, but generalized linear models have received little attention. In this paper, the parameters of beta Bayesian regression models subjected to linear inequality restrictions are estimated. The proposed Bayesian restricted estimator, which is demonstrated by simulated studies, outperforms ordinary estimators. Even in the presence of multicollinearity, it outperforms the ridge estimator in terms of the standard deviation and the mean squared error. The results confirm that the proposed Bayesian restricted estimator makes sparsity in parameter estimating without using the regularization penalty. Finally, a real data set is analyzed by the new proposed Bayesian estimation method.
Author Seifollahi, Solmaz
Bevrani, Hossein
Mansson, Kristofer
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  givenname: Kristofer
  surname: Mansson
  fullname: Mansson, Kristofer
BackLink https://doi.org/10.48550/arXiv.2401.13787$$DView paper in arXiv
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Snippet ReRecent studies in machine learning are based on models in which parameters or state variables are bounded restricted. These restrictions are from prior...
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Statistics - Methodology
Title Bayesian Analysis of the Beta Regression Model Subject to Linear Inequality Restrictions with Application
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