Staffordshire University logo
STORE - Staffordshire Online Repository

Comparison of spatial regression models with Road Traffic Accidents Data

AL-HASANI, Ghanim, ASADUZZAMAN, Md and SOLIMAN, Abdel-Hamid (2019) Comparison of spatial regression models with Road Traffic Accidents Data. Proceedings of the International Conference on Statistics: Theory and Applications (ICSTA'19). ISSN 2562-7767

[img]
Preview
Text
Final copy.pdf - AUTHOR'S ACCEPTED Version (default)
Available under License All Rights Reserved.

Download (1MB) | Preview

Abstract or description

Road traffic accidents (RTA) cause severe problems for the societies in developed and developing countries and result in loss of lives and highly burden cost. Investigators have applied a wide variety of methodological techniques over the years in order to gain more understanding in this discipline. Spatial models, an elegant technique to model spatial data, has been applied to capture localisation effects and influencing factors on RTA. This study aims to compare the spatial lag model (SLM) and the spatial error model (SEM) with the Ordinary least square (OLS) model for the road traffic accident data in the Sultanate of Oman. To compare the performance and accuracy of the OLS, SLM and SEM models, the log-likelihood, Akaike information criterion (AIC), and Bayesian information criteria (BIC) have been used. The SLM model outperforms SEM and OLS models for the data and one of the most significant findings to emerge from this study as the SLM model provides the best values of log-likelihood, AIC and BIC comparing to the values from OLS and SEM models

Item Type: Article
Additional Information: Presented at International Conference on Statistics: Theory and Applications (ICSTA'19); Conference Date: AUGUST 13 - 14, 2019 | LISBON, PORTUGAL . Paper no: 31
Faculty: School of Creative Arts and Engineering > Engineering
Event Title: the International Conference on Statistic: Theory and Applications (ICSTA’19)
Event Location: Lisbon, Portugal
Event Dates: 13 - 14, 2019
Depositing User: Abdel-Hamid SOLIMAN
Date Deposited: 30 Sep 2019 14:52
Last Modified: 24 Feb 2023 13:57
URI: https://eprints.staffs.ac.uk/id/eprint/5892

Actions (login required)

View Item View Item

DisabledGo Staffordshire University is a recognised   Investor in People. Sustain Staffs
Legal | Freedom of Information | Site Map | Job Vacancies
Staffordshire University, College Road, Stoke-on-Trent, Staffordshire ST4 2DE t: +44 (0)1782 294000