Comparative Analysis of Parametric and Non-Parametric Data-Driven Models to Predict Road Crash Severity among Elderly Drivers Using Synthetic Resampling Techniques

Author:

Alrumaidhi Mubarak12ORCID,Farag Mohamed M. G.13ORCID,Rakha Hesham A.14ORCID

Affiliation:

1. Center for Sustainable Mobility, Virginia Tech Transportation Institute, Blacksburg, VA 24061, USA

2. Civil Engineering Department, College of Technological Studies, Public Authority for Applied Education and Training, Shuwaikh 70654, Kuwait

3. College of Computing and Information Technology, Arab Academy for Science, Technology, and Maritime Transport, Alexandria 1029, Egypt

4. Charles E. Via, Jr. Department of Civil and Environmental Engineering, Virginia Tech, Blacksburg, VA 24061, USA

Abstract

As the global elderly population continues to rise, the risk of severe crashes among elderly drivers has become a pressing concern. This study presents a comprehensive examination of crash severity among this demographic, employing machine learning models and data gathered from Virginia, United States of America, between 2014 and 2021. The analysis integrates parametric models, namely logistic regression and linear discriminant analysis (LDA), as well as non-parametric models like random forest (RF) and extreme gradient boosting (XGBoost). Central to this study is the application of resampling techniques, specifically, random over-sampling examples (ROSE) and the synthetic minority over-sampling technique (SMOTE), to address the dataset’s inherent imbalance and enhance the models’ predictive performance. Our findings reveal that the inclusion of these resampling techniques significantly improves the predictive power of parametric models, notably increasing the true positive rate for severe crash prediction from 6% to 60% and boosting the geometric mean from 25% to 69% in logistic regression. Likewise, employing SMOTE resulted in a notable improvement in the non-parametric models’ performance, leading to a true positive rate increase from 8% to 36% in XGBoost. Moreover, the study established the superiority of parametric models over non-parametric counterparts when balanced resampling techniques are utilized. Beyond predictive modeling, the study delves into the effects of various contributing factors on crash severity, enhancing the understanding of how these factors influence elderly road safety. Ultimately, these findings underscore the immense potential of machine learning models in analyzing complex crash data, pinpointing factors that heighten crash severity, and informing targeted interventions to mitigate the risks of elderly driving.

Publisher

MDPI AG

Subject

Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction

Reference51 articles.

1. World Health Organization (2018). Global Status Report on Road Safety 2018, World Health Organization.

2. (2023, March 03). Road Crashes Have More Impact on Poverty than You Probably Thought. Available online: https://blogs.worldbank.org/transport/road-crashes-have-more-impact-poverty-you-probably-thought.

3. U.S. Census Bureau (2023, March 11). 2017 National Population Projections Tables: Main Series, Available online: https://www.census.gov/data/tables/2017/demo/popproj/2017-summary-tables.html.

4. (2023, March 11). The Myth of an “Ageing Society”. Available online: https://www.weforum.org/agenda/2018/05/the-myth-of-the-aging-society/.

5. (2023, March 10). Traffic Deaths Decreased in 2018, but Still 36,560 People Died | NHTSA, Available online: https://www.nhtsa.gov/traffic-deaths-decreased-2018-still-36560-people-died.

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