Injury risk prediction for traffic accidents in Porto Alegre/RS, Brazil

Preprint English OPEN
Perone, Christian S.;
(2015)
  • Subject: Computer Science - Artificial Intelligence | Computer Science - Learning

This study describes the experimental application of Machine Learning techniques to build prediction models that can assess the injury risk associated with traffic accidents. This work uses an freely available data set of traffic accident records that took place in the ... View more
  • References (15)
    15 references, page 1 of 2

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