Bayesian Multilevel Models for Count Data
Keywords:
Count Data, Health, Insurance, Dispersion, Multilevel Models.Abstract
The traditional Poisson regression model for fitting count data is considered inadequate to fit over-or under-dispersed count data and new models have been developed to make up for such inadequacies inherent in the model. In this study, Bayesian Multi-level model was proposed using the No-U-Turn Sampler (NUTS) sampler to sample from the posterior distribution. A simulation was carried out for both over-and under-dispersed data from discrete Weibull distribution. Pareto k diagnostics was implemented, and the result showed that under-dispersed and over-dispersed simulated data has all its k value to be less than 0.5, which indicate that all the observations are good. Also all WAIC were the same as LOO-IC except for Poisson in the over-dispersed simulated data. Real-life data set from National Health Insurance Scheme (NHIS) was used for further analysis. Seven multi-level models were f itted and the Geometric model outperformed other model.
Published
How to Cite
Issue
Section
Copyright (c) 2021 Journal of the Nigerian Society of Physical Sciences

This work is licensed under a Creative Commons Attribution 4.0 International License.
How to Cite
Similar Articles
- Idongesit E. Eteng, Udeze L. Chinedu, Ayei E. Ibor, A stacked ensemble approach with resampling techniques for highly effective fraud detection in imbalanced datasets , Journal of the Nigerian Society of Physical Sciences: Volume 7, Issue 1, February 2025
- Akila Dabara Kayit, Mohd Tahir Ismail, Novel way to predict stock movements using multiple models and comprehensive analysis: leveraging voting meta-ensemble techniques , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 3, August 2024
- Osowomuabe Njama-Abang, Denis U. Ashishie, Paul T. Bukie, Addressing class imbalance in lassa fever epidemic data, using machine learning: a case study with SMOTE and random forest , Journal of the Nigerian Society of Physical Sciences: Volume 7, Issue 3, August 2025
- S. N. Enemuo, O. N. Akande, M. O. Lawrence, I. C. Saidu, Optimized aspect level sentiment analysis of tweet data using deep learning and rule-based techniques , Journal of the Nigerian Society of Physical Sciences: Volume 7, Issue 2, May 2025
- Olumide S. Adesina, Adedayo F. Adedotuun, Kayode S. Adekeye, Ogbu F. Imaga, Adeleke J. Adeyiga, Toluwalase J. Akingbade, On logistic regression versus support vectors machine using vaccination dataset , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 1, February 2024
- Omodele Olubi, Ebeneze Oniya, Taoreed Owolabi, Development of Predictive Model for Radon-222 Estimation in the Atmosphere using Stepwise Regression and Grid Search Based-Random Forest Regression , Journal of the Nigerian Society of Physical Sciences: Volume 3, Issue 2, May 2021
- Shaymaa Mohammed Ahmed, Majid Khan Majahar Ali, Raja Aqib Shamim, Integrating robust feature selection with deep learning for ultra-high-dimensional survival analysis in renal cell carcinoma , Journal of the Nigerian Society of Physical Sciences: Volume 7, Issue 4, November 2025
- Godwin O. Olutona, Health Risk Assessment of Heavy Metals in Sediment of Tropical Freshwater Stream , Journal of the Nigerian Society of Physical Sciences: Volume 5, Issue 1, February 2023
- A. Y. Fasasi, E. Ajenifuja, E. Osagie, L. O. Animasaun, A. E. Adeoye, E. I. Obiajunwa, Optical, Dielectric and Optoelectronic Properties of Spray Deposited Cu-doped Fe2O3 Thin Films , Journal of the Nigerian Society of Physical Sciences: Volume 5, Issue 3, August 2023
- A. Abdulrahim, M. D Shehu, E Yisa, Z. A. Ishaq, Mathematical Models and Comparative Analysis for Rice and Soya Bean Irrigation Crop Water Needs: A Case Study of Bida Basin Niger State, Nigeria , Journal of the Nigerian Society of Physical Sciences: Volume 3, Issue 4, November 2021
You may also start an advanced similarity search for this article.

