Comparing resampling algorithms and classifiers for modeling traffic risk prediction

Road infrastructure has significant effects on road traffic safety and needs further examination. In terms of traffic crash prediction, recent studies have started to develop deep learning classification algorithms. However, given the uncertainty of traffic crashes, predicting the traffic risk poten...

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Main Authors: Wang, Bo, Zhang, Chi, Wong, Yiik Diew, Hou, Lei, Zhang, Min, Xiang, Yujie
Other Authors: School of Civil and Environmental Engineering
Format: Article
Language:English
Published: 2023
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Online Access:https://hdl.handle.net/10356/168557
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1685572023-06-09T15:33:19Z Comparing resampling algorithms and classifiers for modeling traffic risk prediction Wang, Bo Zhang, Chi Wong, Yiik Diew Hou, Lei Zhang, Min Xiang, Yujie School of Civil and Environmental Engineering Engineering::Civil engineering Traffic Crash Risk Prediction Resampling Algorithms Road infrastructure has significant effects on road traffic safety and needs further examination. In terms of traffic crash prediction, recent studies have started to develop deep learning classification algorithms. However, given the uncertainty of traffic crashes, predicting the traffic risk potential of different road sections remains a challenge. To bridge this knowledge gap, this study investigated a real-world expressway and collected its traffic crash data between 2013 and 2020. Then, according to the time-spatial density ratio (Pts), road sections were assigned into three classes corresponding to low, medium, and high risk levels of traffic. Next, different classifiers were compared that were trained using the transformed and resampled feature data to construct a traffic crash risk prediction model. Last, but not least, partial dependence plots (PDPs) were employed to interpret the results and analyze the importance of individual features describing the geometry, pavement, structure, and weather conditions. The results showed that a variety of data balancing algorithms improved the performance of the classifiers, the ensemble classifier superseded the others in terms of the performance metrics, and the combined SMOTEENN and random forest algorithms improved the classification accuracy the most. In the future, the proposed traffic crash risk prediction method will be tested in more road maintenance and design safety assessment scenarios. Published version Key Technologies Research and Development Program of China (No.2020YFC1512005), Key Research and Development Program of Sichuan Province (No.2022YFG0048), Science and Technology Project of Sichuan Transportation Department (No.2019-ZL-12, No.2022-ZL-04), Key Research and Development Program of Shanxi Province (No. 202102020101014). 2023-06-05T08:49:40Z 2023-06-05T08:49:40Z 2022 Journal Article Wang, B., Zhang, C., Wong, Y. D., Hou, L., Zhang, M. & Xiang, Y. (2022). Comparing resampling algorithms and classifiers for modeling traffic risk prediction. International Journal of Environmental Research and Public Health, 19(20), 13693-. https://dx.doi.org/10.3390/ijerph192013693 1660-4601 https://hdl.handle.net/10356/168557 10.3390/ijerph192013693 36294267 2-s2.0-85140877451 20 19 13693 en International Journal of Environmental Research and Public Health © 2022 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/). application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Civil engineering
Traffic Crash Risk Prediction
Resampling Algorithms
spellingShingle Engineering::Civil engineering
Traffic Crash Risk Prediction
Resampling Algorithms
Wang, Bo
Zhang, Chi
Wong, Yiik Diew
Hou, Lei
Zhang, Min
Xiang, Yujie
Comparing resampling algorithms and classifiers for modeling traffic risk prediction
description Road infrastructure has significant effects on road traffic safety and needs further examination. In terms of traffic crash prediction, recent studies have started to develop deep learning classification algorithms. However, given the uncertainty of traffic crashes, predicting the traffic risk potential of different road sections remains a challenge. To bridge this knowledge gap, this study investigated a real-world expressway and collected its traffic crash data between 2013 and 2020. Then, according to the time-spatial density ratio (Pts), road sections were assigned into three classes corresponding to low, medium, and high risk levels of traffic. Next, different classifiers were compared that were trained using the transformed and resampled feature data to construct a traffic crash risk prediction model. Last, but not least, partial dependence plots (PDPs) were employed to interpret the results and analyze the importance of individual features describing the geometry, pavement, structure, and weather conditions. The results showed that a variety of data balancing algorithms improved the performance of the classifiers, the ensemble classifier superseded the others in terms of the performance metrics, and the combined SMOTEENN and random forest algorithms improved the classification accuracy the most. In the future, the proposed traffic crash risk prediction method will be tested in more road maintenance and design safety assessment scenarios.
author2 School of Civil and Environmental Engineering
author_facet School of Civil and Environmental Engineering
Wang, Bo
Zhang, Chi
Wong, Yiik Diew
Hou, Lei
Zhang, Min
Xiang, Yujie
format Article
author Wang, Bo
Zhang, Chi
Wong, Yiik Diew
Hou, Lei
Zhang, Min
Xiang, Yujie
author_sort Wang, Bo
title Comparing resampling algorithms and classifiers for modeling traffic risk prediction
title_short Comparing resampling algorithms and classifiers for modeling traffic risk prediction
title_full Comparing resampling algorithms and classifiers for modeling traffic risk prediction
title_fullStr Comparing resampling algorithms and classifiers for modeling traffic risk prediction
title_full_unstemmed Comparing resampling algorithms and classifiers for modeling traffic risk prediction
title_sort comparing resampling algorithms and classifiers for modeling traffic risk prediction
publishDate 2023
url https://hdl.handle.net/10356/168557
_version_ 1772825769382248448