4.7 Article

Young driver fatal motorcycle accident analysis by jointly maximizing accuracy and information

Journal

ACCIDENT ANALYSIS AND PREVENTION
Volume 129, Issue -, Pages 350-361

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.aap.2019.04.016

Keywords

Young drivers; Fatal accidents; Motorcycle; Machine learning; Information measure; Prediction; Bayesian network; Key factors

Funding

  1. Israeli Netional Road Safety Authority
  2. Ran Naor Foundation for the Advancement of Road Safety Research [2008-035]

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While young drivers (YDs) constitute similar to 10% of the driver population, their fatality rate in motorcycle accidents is up to three times higher. Thus, we are interested in predicting fatal motorcycle accidents (FMAs), and in identifying their key factors and possible causes. Accurate prediction of YD FMAs from data by risk minimization using the 0/1 loss function (i.e., the ordinary classification accuracy) cannot be guaranteed because these accidents are only similar to 1% of all YD motorcycle accidents, and classifiers tend to focus on the majority class of minor accidents at the expense of the minority class of fatal ones. Also, classifiers are usually uninformative (providing no information about the distribution of misclassifications), insensitive to error severity (making no distinction between misclassification of fatal accidents as severe or minor), and limited in identifying key factors. We propose to use an information measure (IM) that jointly maximizes accuracy and information and is sensitive to the error distribution and severity. Using a database of similar to 3600 motorcycle accidents, a Bayesian network classifier optimized by IM predicted FMAs better than classifiers maximizing accuracy or other predictive or information measures, and identified fatal accident key factors and causal relations.

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