An Alternative Method for Traffic Accident Severity Prediction: Using Deep Forests Algorithm

Traffic safety has always been an important issue in sustainable transportation development, and the prediction of traffic accident severity remains a crucial challenging issue in the domain of traffic safety. A huge variety of forecasting models have been proposed to meet this challenge. These mode...

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Main Authors: Jing Gan, Linheng Li, Dapeng Zhang, Ziwei Yi, Qiaojun Xiang
Format: Article
Language:English
Published: Wiley 2020-01-01
Series:Journal of Advanced Transportation
Online Access:http://dx.doi.org/10.1155/2020/1257627
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author Jing Gan
Linheng Li
Dapeng Zhang
Ziwei Yi
Qiaojun Xiang
author_facet Jing Gan
Linheng Li
Dapeng Zhang
Ziwei Yi
Qiaojun Xiang
author_sort Jing Gan
collection DOAJ
description Traffic safety has always been an important issue in sustainable transportation development, and the prediction of traffic accident severity remains a crucial challenging issue in the domain of traffic safety. A huge variety of forecasting models have been proposed to meet this challenge. These models gradually evolved from linear to nonlinear forms and from traditional statistical regression models to current popular machine learning models. Recently, a machine learning algorithm called Deep Forests based on the decision tree ensemble has aroused widespread concern, which was proposed for the first time by a research team of Nanjing University. This algorithm was proved to be more accurate and robust in comparison with other machine learning algorithms. Motivated by this benefit, this study employs the UK road safety dataset to propose a novel method for predicting the severity of traffic accidents based on the Deep Forests algorithm. To verify the superiority of our proposed method, several other machine learning algorithm-based perdition models were implemented to predict traffic accident severity with the same dataset, and the prediction results show that the Deep Forests algorithm present good stability, fewer hyper-parameters, and the highest accuracy under different level of training data volume. It is expected that the findings from this study would be helpful for the establishment or improvement of effective traffic safety system within a sustainable transportation system, which is of great significance for helping government managers to establish timely proactive strategies in traffic accident prevention and effectively improve road traffic safety.
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institution Kabale University
issn 0197-6729
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language English
publishDate 2020-01-01
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record_format Article
series Journal of Advanced Transportation
spelling doaj-art-170400fde6ef43f2beccb64a2f0a31a72025-02-03T01:05:15ZengWileyJournal of Advanced Transportation0197-67292042-31952020-01-01202010.1155/2020/12576271257627An Alternative Method for Traffic Accident Severity Prediction: Using Deep Forests AlgorithmJing Gan0Linheng Li1Dapeng Zhang2Ziwei Yi3Qiaojun Xiang4Jiangsu Key Laboratory of Urban ITS, School of Transportation, Southeast University, Nanjing 211189, ChinaJiangsu Key Laboratory of Urban ITS, School of Transportation, Southeast University, Nanjing 211189, ChinaBig Data Research Center, Southwestern University of Finance and Economics, Chengdu 611130, ChinaJiangsu Key Laboratory of Urban ITS, School of Transportation, Southeast University, Nanjing 211189, ChinaJiangsu Key Laboratory of Urban ITS, School of Transportation, Southeast University, Nanjing 211189, ChinaTraffic safety has always been an important issue in sustainable transportation development, and the prediction of traffic accident severity remains a crucial challenging issue in the domain of traffic safety. A huge variety of forecasting models have been proposed to meet this challenge. These models gradually evolved from linear to nonlinear forms and from traditional statistical regression models to current popular machine learning models. Recently, a machine learning algorithm called Deep Forests based on the decision tree ensemble has aroused widespread concern, which was proposed for the first time by a research team of Nanjing University. This algorithm was proved to be more accurate and robust in comparison with other machine learning algorithms. Motivated by this benefit, this study employs the UK road safety dataset to propose a novel method for predicting the severity of traffic accidents based on the Deep Forests algorithm. To verify the superiority of our proposed method, several other machine learning algorithm-based perdition models were implemented to predict traffic accident severity with the same dataset, and the prediction results show that the Deep Forests algorithm present good stability, fewer hyper-parameters, and the highest accuracy under different level of training data volume. It is expected that the findings from this study would be helpful for the establishment or improvement of effective traffic safety system within a sustainable transportation system, which is of great significance for helping government managers to establish timely proactive strategies in traffic accident prevention and effectively improve road traffic safety.http://dx.doi.org/10.1155/2020/1257627
spellingShingle Jing Gan
Linheng Li
Dapeng Zhang
Ziwei Yi
Qiaojun Xiang
An Alternative Method for Traffic Accident Severity Prediction: Using Deep Forests Algorithm
Journal of Advanced Transportation
title An Alternative Method for Traffic Accident Severity Prediction: Using Deep Forests Algorithm
title_full An Alternative Method for Traffic Accident Severity Prediction: Using Deep Forests Algorithm
title_fullStr An Alternative Method for Traffic Accident Severity Prediction: Using Deep Forests Algorithm
title_full_unstemmed An Alternative Method for Traffic Accident Severity Prediction: Using Deep Forests Algorithm
title_short An Alternative Method for Traffic Accident Severity Prediction: Using Deep Forests Algorithm
title_sort alternative method for traffic accident severity prediction using deep forests algorithm
url http://dx.doi.org/10.1155/2020/1257627
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