Road user behavior: Describing, inferring, predicting and beyond

Birsen Donmez1, Anthony D. McDonald2, John D. Lee2, Linda Ng Boyle3
1Mechanical & Industrial Engineering, University of Toronto, 5 King’s College Rd, Toronto, M5S 3G8, Ontario, Canada
2Industrial & Systems Engineering, University of Wisconsin–Madison, 1513 University Avenue, Madison, 53706, WI, USA
3Civil & Urban Engineering, New York University, 1 MetroTech Center, 19th floor, Brooklyn, 11201, NY, USA

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