Handling Imbalanced Data for Real-Time Crash Prediction: Application of Boosting and Sampling Techniques

被引:17
作者
Ariannezhad, Amin [1 ]
Karimpour, Abolfazl [1 ]
Qin, Xiao [2 ]
Wu, Yao-Jan [1 ]
Salmani, Yasamin [3 ]
机构
[1] Univ Arizona, Dept Civil & Architectural Engn & Mech, Tucson, AZ 85721 USA
[2] Univ Wisconsin, Dept Civil & Environm Engn, Milwaukee, WI 53211 USA
[3] Bryant Univ, Coll Business, Dept Management, Project & Operat Management, Smithfield, RI 02917 USA
关键词
Real-time crash prediction; Imbalanced data; Traffic conditions; Logistic regression; Adaptive boosting; Undersampling; Random forest (RF); BAYESIAN UPDATING APPROACH; SAFETY EVALUATION; FREEWAYS; RISK; FRAMEWORK; SEVERITY; MACHINE; WEATHER; IMPACT;
D O I
10.1061/JTEPBS.0000499
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
With a growing number of intelligent transportation system sensors and the networkwide deployment of those across the nation's roadway facilities, current research and practices should concentrate on more proactive safety strategies. In recent years, real-time traffic data collected from ITS sensors have been utilized to develop crash prediction models. Real-time crash prediction models can be used to identify hazardous traffic conditions that might cause a crash. This study aims to examine how employing data mining techniques that account for imbalanced data could improve the predictive capability of real-time crash prediction models. The term imbalanced data refers to a condition where the number of observations in each class is not equally distributed among the data set (noncrash cases outnumber crash cases). To decrease the within-class variation of imbalanced data, the data were split into two traffic-state data sets: free-flow speed (FFS) and congestion. Three models, including logistic regression as the baseline, random forest (RF) with random undersampling, and Adaptive Boosting (AdaBoost), were estimated with each data set. The results were compared with the models that were estimated using the complete set of data. Model comparisons indicated that all three models achieved significantly better predictive results with the congested and FFS data sets as opposed to the data set containing all crashes and that, while in some cases the results of the undersampled RF model were slightly better than those of AdaBoost, both models outperformed the logistic regression model. The results of this study demonstrated that using models to deal with imbalanced data and lowering the variation of imbalanced data could substantially improve crash prediction accuracy. The findings could help traffic agencies to practically implement and deploy crash prediction models for real-time applications and develop crash prevention strategies accordingly.
引用
收藏
页数:10
相关论文
共 60 条
[1]   Split models for predicting multivehicle crashes during high-speed and low-speed operating conditions an freeways [J].
Abdel-Aty, M ;
Uddin, N ;
Pande, A .
STATISTICAL METHODS; HIGHWAY SAFETY DATA, ANALYSIS, AND EVALUATION; OCCUPANT PROTECTION; SYSTEMATIC REVIEWS AND META-ANALYSIS, 2005, (1908) :51-58
[2]   Predicting freeway crashes from loop detector data by matched case-control logistic regression [J].
Abdel-Aty, M ;
Uddin, N ;
Pande, A ;
Abdalla, MF ;
Hsia, L .
STATISTICAL METHODS AND SAFETY DATA ANALYSIS AND EVALUATION, 2004, (1897) :88-95
[3]   Assessing Safety on Dutch Freeways with Data from Infrastructure-Based Intelligent Transportation Systems [J].
Abdel-Aty, Mohamed ;
Pande, Anurag ;
Das, Abhishek ;
Knibbe, Willem Jan .
TRANSPORTATION RESEARCH RECORD, 2008, (2083) :153-161
[4]   Calibrating a real-time traffic crash-prediction model using archived weather and ITS traffic data [J].
Abdel-Aty, Mohamed A. ;
Pemmanaboina, Rajashekar .
IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2006, 7 (02) :167-174
[5]   Assessment of Interaction of Crash Occurrence, Mountainous Freeway Geometry, Real-Time Weather, and Traffic Data [J].
Ahmed, Mohamed M. ;
Abdel-Aty, Mohamed ;
Yu, Rongjie .
TRANSPORTATION RESEARCH RECORD, 2012, (2280) :51-59
[6]   Bayesian Updating Approach for Real-Time Safety Evaluation with Automatic Vehicle Identification Data [J].
Ahmed, Mohamed M. ;
Abdel-Aty, Mohamed ;
Yu, Rongjie .
TRANSPORTATION RESEARCH RECORD, 2012, (2280) :60-67
[7]   The Viability of Using Automatic Vehicle Identification Data for Real-Time Crash Prediction [J].
Ahmed, Mohamed M. ;
Abdel-Aty, Mohamed A. .
IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2012, 13 (02) :459-468
[8]   Applying support vector machines to imbalanced datasets [J].
Akbani, R ;
Kwek, S ;
Japkowicz, N .
MACHINE LEARNING: ECML 2004, PROCEEDINGS, 2004, 3201 :39-50
[9]  
Ariannezhad A, 2014, P 93 ANN M TRANSP RE
[10]   Large-Scale Loop Detector Troubleshooting Using Clustering and Association Rule Mining [J].
Ariannezhad, Amin ;
Wu, Yao-Jan .
JOURNAL OF TRANSPORTATION ENGINEERING PART A-SYSTEMS, 2020, 146 (07)