Transparent deep machine learning framework for predicting traffic crash severity

被引:0
作者
Karim Sattar
Feras Chikh Oughali
Khaled Assi
Nedal Ratrout
Arshad Jamal
Syed Masiur Rahman
机构
[1] King Fahd University of Petroleum & Minerals,Interdisciplinary Research Center for Smart Mobility and Logistics
[2] King Fahd University of Petroleum & Minerals,Center for Communication & IT Research, Research Institute
[3] King Fahd University of Petroleum & Minerals,Department of Civil and Environmental Engineering
[4] Research Institute,Applied Research Center for Environment & Marine Studies
[5] King Fahd University of Petroleum & Minerals,undefined
来源
Neural Computing and Applications | 2023年 / 35卷
关键词
Injury severity prediction; Machine learning; Feature importance; Countermeasures;
D O I
暂无
中图分类号
学科分类号
摘要
Analysis of crash injury severity is a promising research target in highway safety studies. A better understanding of crash severity risk factors is vital for the proactive implementation of suitable countermeasures. In literature, crash injury severity was widely studied using statistical models. Though these models have a sound theoretical basis and interpretability, they were based on several unrealistic assumptions, which, if flouted, may yield biased model estimations. To overcome the limitations of statistical models, applied machine learning has rapidly emerged on the horizon of highway safety analysis. This study aims to model injury severity of motor vehicle crashes using three advanced machine learning approaches, i.e., vanilla multi-layer perceptron (MLP) using Keras, MLP with embedding layers, and TabNet. Among the three models, TabNet may be considered a fairly complex framework which is based on attention-based network for tabular data. To improve the predictive performance of proposed models, hyperparameter tuning was carried out using the Bayesian optimization technique. Different evaluation metrics (i.e., accuracy, precision, recall, F−1 score, AUC, and training time) were utilized to compare all the models' injury severity classification performance. Experimental results showed that all the models yielded similar and adequate performance based on most of the evaluation metrics. However, based on training time, the Keras (MLP) model outperformed other models with a training time of 3.45 s which represents a reduction of 51% and 93% compared to MLP with embedding layers and TabNet, respectively. Feature importance analysis conducted using TabNet revealed that predictors such as number of vehicles involved, number of casualties, speed limit, junction location, vehicle type, and road type are the most sensitive variables aggravating the injury severity. The proposed supervised deep learning models supported by feature importance analysis make the modeling framework transparent and interpretable. The outcome of this study could provide essential guidance for practitioners for taking timely and concrete steps to improve highway safety. Moreover, this research will allow trauma and emergency centers to predict possible damage from a traffic accident and deploy the necessary emergency units to offer appropriate emergency treatment.
引用
收藏
页码:1535 / 1547
页数:12
相关论文
共 50 条
[41]   Predicting Road Crash Severity Using Classifier Models and Crash Hotspots [J].
Islam, Md Kamrul ;
Reza, Imran ;
Gazder, Uneb ;
Akter, Rocksana ;
Arifuzzaman, Md ;
Rahman, Muhammad Muhitur .
APPLIED SCIENCES-BASEL, 2022, 12 (22)
[42]   Capturing short-term spatiotemporal traffic states for crash severity prediction in urban areas using explainable machine learning models [J].
Zhao, Jiahui ;
Li, Zhibin ;
Liu, Pan ;
Zheng, Qikang .
JOURNAL OF TRANSPORTATION SAFETY & SECURITY, 2025,
[43]   Spatiotemporal grid-based crash prediction—application of a transparent deep hybrid modeling framework [J].
Mohammad Tamim Kashifi ;
Ibrahim Yousif Al-Sghan ;
Syed Masiur Rahman ;
Hassan Musaed Al-Ahmadi .
Neural Computing and Applications, 2022, 34 :20655-20669
[44]   Machine learning framework for predicting reliability of solder joints [J].
Yi, Sung ;
Jones, Robert .
SOLDERING & SURFACE MOUNT TECHNOLOGY, 2020, 32 (02) :82-92
[45]   Comparison of machine learning algorithms for predicting traffic accident severity (case study: United Kingdom from 2010 to 2014) [J].
Rezashoar, Soheil ;
Kashi, Ehsan ;
Saeidi, Soheila .
INTERNATIONAL JOURNAL OF CRASHWORTHINESS, 2025,
[46]   Investigating the effect of road condition and vacation on crash severity using machine learning algorithms [J].
Almannaa, Mohammed ;
Zawad, Md Nabil ;
Moshawah, May ;
Alabduljabbar, Haifa .
INTERNATIONAL JOURNAL OF INJURY CONTROL AND SAFETY PROMOTION, 2023, 30 (03) :392-402
[47]   IMPROVING ROAD SAFETY: SUPERVISED MACHINE LEARNING ANALYSIS OF FACTORS INFLUENCING CRASH SEVERITY [J].
Le, Khanh Giang .
SCIENTIFIC JOURNAL OF SILESIAN UNIVERSITY OF TECHNOLOGY-SERIES TRANSPORT, 2025, 127 :129-153
[48]   Developing machine learning based framework for the network traffic prediction [J].
Murugesan, G. ;
Jaiswal, Rachana ;
Kshatri, Sapna Singh ;
Bhonsle, Devanand .
INTERNATIONAL JOURNAL OF NEXT-GENERATION COMPUTING, 2022, 13 (03) :777-784
[49]   Predicting Renal Toxicity of Compounds with Deep Learning and Machine Learning Methods [J].
Bitopan Mazumdar ;
Pankaj Kumar Deva Sarma ;
Hridoy Jyoti Mahanta .
SN Computer Science, 4 (6)
[50]   An overview of machine learning and deep learning techniques for predicting epileptic seizures [J].
Zurdo-Tabernero, Marco ;
Canal-Alonso, Angel ;
de la Prieta, Fernando ;
Rodriguez, Sara ;
Prieto, Javier ;
Corchado, Juan Manuel .
JOURNAL OF INTEGRATIVE BIOINFORMATICS, 2024, 20 (04)