Modeling anger and aggressive driving behavior in a dynamic choice-latent variable model
Loading...
Files
Date
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier Ltd
Abstract
This paper develops a hybrid choice-latent variable model combined with a Hidden Markov model in order to analyze the causes of aggressive driving and forecast its manifestations accordingly. The model is grounded in the state-trait anger theory; it treats trait driving anger as a latent variable that is expressed as a function of individual characteristics, or as an agent effect, and state anger as a dynamic latent variable that evolves over time and affects driving behavior, and that is expressed as a function of trait anger, frustrating events, and contextual variables (e.g., geometric roadway features, flow conditions, etc.). This model may be used in order to test measures aimed at reducing aggressive driving behavior and improving road safety, and can be incorporated into micro-simulation packages to represent aggressive driving. The paper also presents an application of this model to data obtained from a driving simulator experiment performed at the American University of Beirut. The results derived from this application indicate that state anger at a specific time period is significantly affected by the occurrence of frustrating events, trait anger, and the anger experienced at the previous time period. The proposed model exhibited a better goodness of fit compared to a similar simple joint model where driving behavior and decisions are expressed as a function of the experienced events explicitly and not the dynamic latent variable. © 2014 Elsevier Ltd. All rights reserved.
Description
Keywords
Aggressive driving, Hidden markov model, Hybrid choice model, Road safety, State-trait anger theory, Aggression, Anger, Automobile driving, Choice behavior, Frustration, Humans, Markov chains, Accident prevention, Hidden markov models, Motor transportation, Roads and streets, Aggressive driving behaviors, Choice model, Contextual variables, Individual characteristics, Latent variable modeling, Car driving, Decision making, Human, Probability, Computer simulation