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Case-Based Prediction of Teen Driver Behavior and Skill
Book chapter   Peer reviewed

Case-Based Prediction of Teen Driver Behavior and Skill

Santiago Ontañón, Yi-Ching Lee, Sam Snodgrass, Dana Bonfiglio, Flaura K. Winston, Catherine McDonald and Avelino J. Gonzalez
Case-Based Reasoning Research and Development, pp 375-389
01 Jan 2014
url
https://stars.library.ucf.edu/scopus2010/9010View
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Abstract

Driving behavior feature selection similarity assessment
Motor vehicle crashes are the leading cause of death for U.S. teens, accounting for more than one in three deaths in this age group and claiming the lives of about eight teenagers a day, according to the 2010 report by the Center for Disease Control and Prevention. In order to inform new training methods and new technology to accelerate learning and reduce teen crash risk, a more complete understanding of this complex driving behavior was needed. In this application paper we present our first step towards deploying case-based techniques to model teenage driver behavior and skill level. Specifically, we present our results in using case-based reasoning (CBR) to model both the vehicle control behavior and the skill proficiency of teen drivers by using data collected in a high-fidelity driving simulator. In particular, we present a new similarity measure to compare behavioral data based on feature selection methods, which achieved good results in predicting behavior and skill.

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6 citations in Scopus

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