Title of article
Bayesian parameter estimation in addiction model
Author/Authors
AL-Khairullah, Najla A. Department of Mathematics - College of Science - University of Baghdad, Iraq , Kadhim AlBaldawi, Tasnim Hasan Department of Mathematics - College of Science - University of Baghdad, Iraq
Pages
13
From page
3059
To page
3071
Abstract
In this paper, we investigated the performance of Bayesian Computational methods for estimating the parameters of the multinomial Logistic regression model. We discussed two of the most common Bayesian computational algorithms: the Random walk Metropolis-Hastings (RWM) and Slice algorithms and their application to estimating the parameters of the addiction model as well as comparing the performance of these algorithms using the mean square error (MSE) criterion. The results revealed that the performance of the algorithms is excellent, with a slight superiority to the RWM algorithm.
Keywords
Multinomial Logistic Regression , MCMC , Random Walk Metropolis-Hasting Algorithm , Slice Sampling
Journal title
International Journal of Nonlinear Analysis and Applications
Serial Year
2022
Record number
2714048
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