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A gradient boosting logit model to investigate driver’s stop-or-run behavior at signalized intersections using high-resolution traffic data
Institution:1. Physics and Engineering Department, Benedict College, 1600 Harden St., Columbia, SC 29204, USA;2. Math and Computer Science Department, Benedict College, 1600 Harden St., Columbia, SC 29204, USA;3. Civil and Environmental Engineering Department, Old Dominion University, 135 Kaufman Hall, Norfolk, VA 23529, USA;1. LAAS-CNRS, Université de Toulouse, CNRS, Toulouse, France;2. Université du Québec à Montréal, Montréal, Canada;3. LAAS-CNRS, Université de Toulouse, CNRS, INSA, Toulouse, France;1. HNTB Corp., 1301 Fannin St, Suite 1800, Houston, TX 77002, United States;2. FactSet Research Systems Inc., 90 Park Ave, 11th Floor, New York, NY 10016, United States;3. 416c McLaughlin Hall, University of California, Berkeley, CA 94720, United States;1. Department of Industrial Engineering and Management, Ben-Gurion University of the Negev, P.O.B. 653, Beer-Sheva 84105, Israel;2. Department of Industrial Engineering and Management, Ariel University, Ariel 40700, Israel;1. Center for Injury Research and Prevention, The Children’s Hospital of Philadelphia, United States;2. Department of Bioengineering, University of Pennsylvania, United States
Abstract:Driver’s stop-or-run behavior at signalized intersection has become a major concern for the intersection safety. While many studies were undertaken to model and predict drivers’ stop-or-run (SoR) behaviors including Yellow-Light-Running (YLR) and Red-Light-Running (RLR) using traditional statistical regression models, a critical problem for these models is that the relative influences of predictor variables on driver’s SoR behavior could not be evaluated. To address this challenge, this research proposes a new approach which applies a recently developed data mining approach called gradient boosting logit model to handle different types of predictor variables, fit complex nonlinear relationships among variables, and automatically disentangle interaction effects between influential factors using high-resolution traffic and signal event data collected from loop detectors. Particularly, this research will first identify a series of related influential factors including signal timing information, surrounding traffic information, and surrounding drivers’ behaviors using thousands drivers’ decision events including YLR, RLR, and first-to-stop (FSTP) extracted from high-resolution loop detector data from three intersections. Then the research applies the proposed data mining approach to search for the optimal prediction model for each intersection. Furthermore, a comparison was conducted to compare the proposed new method with the traditional statistical regression model. The results show that the gradient boosting logit model has superior performance in terms of prediction accuracy. In contrast to other machine learning methods which usually apply ‘black-box’ procedures, the gradient boosting logit model can identify and rank the relative importance of influential factors on driver’s stop-or-run behavior prediction. This study brings great potential for future practical applications since loops have been widely implemented in many intersections and can collect data in real time. This research is expected to contribute to the improvement of intersection safety significantly.
Keywords:Driving behavior  Gradient boosting logit  Variable importance  High-resolution traffic even data
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