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First published online January 1, 2010

Multiple Applications of Multivariate Adaptive Regression Splines Technique to Predict Rear-End Crashes at Unsignalized Intersections

Abstract

Crash prediction models are used extensively in highway safety analysis. This paper discusses a recently developed data-mining technique to predict motor vehicle crashes: the multivariate adaptive regression splines (MARS) technique. MARS shows promising predictive power and does not suffer from a black-box limitation. Negative binomial (NB) and MARS models were fitted and compared with the use of extensive data collected on unsignalized intersections in Florida. Two models were estimated for rear-end crash frequency at three-and four-legged unsignalized intersections. Treatment of crash frequency as a continuous response variable to fit a MARS model was also examined by normalizing crash frequency with the natural logarithm of the annual average daily traffic. The combination of MARS with a machine learning technique (random forest) was explored and discussed. The significant factors that affected rear-end crashes were traffic volume on the major road, upstream and downstream distances to the nearest signalized intersection, median type on the major approach, land use at the intersection's influence area, and geographic location within the state. The study showed that MARS could predict crashes almost like the traditional NB models, and its goodness-of-fit performance was encouraging. The use of MARS to predict continuous response variables yielded more favorable results than its use to predict discrete response variables. The generated MARS models showed the most promising results after the covariates were screened by using random forest.

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References

1. Florida Strategic Highway Safety Plan, Florida Department of Transportation, 2006.
2. Abbess C., Jarett D., and Wright C. Accidents at Blackspots: Estimating the Effectiveness of Remedial Treatment, with Special Reference to the “Regression-to-Mean” Effect. Traffic Engineering and Control, Vol. 22, No. 10, 1981, pp. 535–542.
3. Kulmala R. Safety at Rural Three- and Four-Arm Junctions: Development and Applications of Accident Prediction Models. VTT Publications 233. Technical Research Center of Finland, Espoo, 1995.
4. Lord D. The Prediction of Accidents on Digital Networks: Characteristics and Issues Related to the Application of Accident Prediction Models. PhD dissertation. Department of Civil Engineering, University of Toronto, Ontario, Canada, 2000.
5. Miaou S.-P., and Lord D. Modeling Traffic Crash-Flow Relationships for Intersections: Dispersion Parameter, Functional Form, and Bayes Versus Empirical Bayes Methods. In Transportation Research Record: Journal of the Transportation Research Board, No. 1840, Transportation Research Board of the National Academies, Washington, D.C., 2003, pp. 31–40.
6. Xie Y., Lord D., and Zhang Y. Predicting Motor Vehicle Collisions Using Bayesian Neural Network Models: An Empirical Analysis. Accident Analysis & Prevention, Vol. 39, No. 5, 2007, pp. 922–933.
7. Vogt A. Crash Models for Rural Intersections: Four-Lane by Two-Lane Stop-Controlled and Two-Lane by Two-Lane Signalized. FHWA-RD-99-128. Final Report. FHWA, U.S. Department of Transportation, 1999.
8. Poch M., and Mannering F. Negative Binomial Analysis of Intersection Accident Frequencies. Journal of Transportation Engineering, Vol. 122, No. 2, 1996.
9. Mussone L., Ferrari A., and Oneta M. An Analysis of Urban Collisions Using an Artificial Intelligence Model. Accident Analysis & Prevention, Vol. 31, No. 6, 1999, pp. 705–718.
10. Abdelwahab H. T., and Abdel-Aty M. A. Artificial Neural Networks and Logit Models for Traffic Safety Analysis of Toll Plazas. In Transportation Research Record: Journal of the Transportation Research Board, No. 1784, Transportation Research Board of the National Academies, Washington, D.C., 2002, pp. 115–125.
11. Riviere C., Lauret P., Ramsamy J., and Page Y. A Bayesian Neural Network Approach to Estimating the Energy Equivalent Speed. Accident Analysis and Prevention, Vol. 38, No. 2, 2006, pp. 248–259.
12. Li X., Lord D., Zhang Y., and Xie Y. Predicting Motor Vehicle Crashes Using Support Vector Machine Models. Accident Analysis and Prevention, Vol. 40, No. 4, 2008, pp. 1611–1618.
13. Friedman J. Multivariate Adaptive Regression Splines. Annals of Statistics, Vol. 19, 1991.
14. Put R., Xu Q., Massart D., and Heyden Y. Multivariate Adaptive Regression Splines (MARS) in Chromatographic Quantitative Structure–Retention Relationship Studies. Journal of Chromatography A, 1055, 2004, pp. 11–19.
15. Attoh-Okine N., Mensah S., and Nawaiseh M. A New Technique for Using Multivariate Adaptive Regression Splines (MARS) in Pavement Roughness Prediction. Proc., Institution of Civil Engineers, Vol. 156, No. 1, Feb. 2003, pp. 51–55.
16. Abraham A., Steinberg D., and Philip N. Rainfall Forecasting Using Soft Computing Models and Multivariate Adaptive Regression Splines. IEEE SMC Transactions: Special Issue on Fusion of Soft Computing and Hard Computing in Industrial Applications, Feb. 2001.
17. Xiong R., and Meullenet J. Application of Multivariate Adaptive Regression Splines (MARS) to the Preference Mapping of Cheese Sticks. Journal of Food Science, Vol. 69, 2004.
18. Sekulic S., and Kowalski B. MARS—A Tutorial. Journal of Chemometrics, Vol. 6, No. 4, 199–216, July–Aug. 1992.
19. Breiman L. Random Forests. Machine Learning, Vol. 45, No. 1, Oct. 2001, pp. 5–32.
20. Harb R., Yan X., Radwan E., and Su X. Exploring Precrash Maneuvers Using Classification Trees and Random Forests. Accident Analysis and Prevention, Vol. 41, No. 1, Jan. 2009, pp. 98–107.
21. Kuhn S., Egert B., Neumann S., and Steinbeck C. Building Blocks for Automated Elucidation of Metabolites: Machine Learning Methods for NMR Prediction. BMC Bioinformatics, Vol. 9, Sept. 2008, pp. 5–32.
22. R Software. http://www.r-project.org/. Accessed April 27, 2009.
23. Lord D., and Mahlawat M. Examining Application of Aggregated and Disaggregated Poisson-Gamma Models Subjected to Low Sample Mean Bias. In Transportation Research Record: Journal of the Transportation Research Board, No. 2136, Transportation Research Board of the National Academies, Washington, D.C., 2009, pp. 1–10.
24. Jonsson T., Lyon C., Ivan J. N., Washington S. P., van Schalkwyk I., and Lord D. Differences in the Performance of Safety Performance Functions Estimated for Total Crash Count and for Crash Count by Crash Type. In Transportation Research Record: Journal of the Transportation Research Board, No. 2102, Transportation Research Board of the National Academies, Washington, D.C., 2009, pp. 115–123.
25. Summersgill I., and Kennedy J. Accidents at Three-Arm Priority Functions on Urban Single Carriageway Roads. TRL Report 184. Transport Research Laboratory, Crowthorne, United Kingdom, 1996, p. 74.
26. Layfield R. Accidents at Urban Priority Crossroads and Staggered Junctions. TRL Report 185. Transport Research Laboratory, Crowthorne, United Kingdom, 1996, p. 120.
27. Crash Analysis Reporting System. http://tlhost01.dot.state.fl.us/bluezone/FDOT_Session/default.htm. Accessed Jan. 20, 2008.
28. Google Earth. http://earth.google.com/. Accessed Jan. 20, 2008.
29. Video Log Viewer Application. http://webapp01.dot.state.fl.us/videolog/. Accessed Feb. 10, 2008.
30. Roadway Characteristic Inventory. http://webapp01.dot.state.fl.us/Login/default.asp. Accessed Feb. 10, 2008.
31. SAS Institute Inc. Version 9 of the SAS System for Windows. Cary, N.C., 2002.
32. Zuur A., Ieno E., and Smith G. Analyzing Ecological Data. Statistics for Biology and Health, Springer, New York, 2007.
33. Wang X., and Abdel-Aty M. Temporal and Spatial Analyses of Rear-End Crashes at Signalized Intersections. Accident Analysis and Prevention, Vol. 38, 2006, pp. 1137–1150.
34. Phillips S. Empirical Collision Model for Four-Lane Median Divided and Five-Lane with TWLTL Segments. MS thesis. North Carolina State University, Raleigh, 2004.
35. Pham M., de Mouzon O., Chung E., and El Faouzi N. Sensitivity of Road Safety Indicators in Normal and Crash Cases. 10th International Conference on Application of Advanced Technologies in Transportation, Athens, Greece, May 27-31, 2008.

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Article first published online: January 1, 2010
Issue published: January 2010

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© 2010 National Academy of Sciences.
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Authors

Affiliations

Kirolos Haleem
Department of Civil, Environmental, and Construction Engineering, University of Central Florida, Orlando, FL 32816-2450.
Mohamed Abdel-Aty
Department of Civil, Environmental, and Construction Engineering, University of Central Florida, Orlando, FL 32816-2450.
Joseph Santos
Florida Department of Transportation, FDOT State Safety Office, Safety Office, MS#53, 605 Suwannee Street, Tallahassee, FL 32399-0450.

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