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Handling Imbalanced Data in Road Crash Severity Prediction by Machine Learning Algorithms
2020
Infrastructures
Crash severity is undoubtedly a fundamental aspect of a crash event. Although machine learning algorithms for predicting crash severity have recently gained interest by the academic community, there is a significant trend towards neglecting the fact that crash datasets are acutely imbalanced. Overlooking this fact generally leads to weak classifiers for predicting the minority class (crashes with higher severity). In this paper, in order to handle imbalanced accident datasets and provide a
doi:10.3390/infrastructures5070061
fatcat:wlucfy4umvhevaf6hpstcreoyu