2022
DOI: 10.14254/jsdtl.2022.7-2.1
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An assessment of machine learning and data balancing techniques for evaluating downgrade truck crash severity prediction in Wyoming

Abstract: This study involved the investigation of various machine learning methods, including four classification tree-based ML models, namely the Adaptive Boosting tree, Random Forest, Gradient Boost Decision Tree, Extreme Gradient Boosting tree, and three non-tree-based ML models, namely Support Vector Machines, Multi-layer Perceptron and k-Nearest Neighbors for predicting the level of severity of large truck crashes on Wyoming road networks. The accuracy of these seven methods was then compared. The Final ROC AUC sc… Show more

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