Using Machine Learning to Classify Driver Behavior from Psychological Features: An Exploratory Study


Student Name: RokunuzJahan Rudro
Defense Date:
Location: Eaton Hall, Room 1A
Chair: Sumaiya Shomaji

David Johnson

Zijun Yao

Alexandra Kondyli

Abstract:

Driver inattention and human error are the primary causes of traffic crashes. However, little is known about the relationship between driver aggressiveness and safety. Although several studies that group drivers into different classes based on their driving performance have been conducted, little has been done to explore how behavioral traits are linked to driver behavior. The study aims to link different driver profiles, assessed through psychological evaluations, with their likelihood of engaging in risky driving behaviors, as measured in a driving simulation experiment. By incorporating psychological factors into machine learning algorithms, our models were able to successfully relate self-reported decision-making and personality characteristics with actual driving actions. Our results hold promise toward refining existing models of driver behavior  by understanding the psychological and behavioral characteristics that influence the risk of crashes.

Degree: MS Thesis Defense (CS)
Degree Type: MS Thesis Defense
Degree Field: Computer Science