Modeling freight truck-related traffic crash hazards with uncertainties: A framework of interpretable Bayesian neural network with stochastic variational inference

Quan Yuan1, Haocheng Lin1, Chengcheng Yu1, Chao Yang1
1Urban Mobility Institute, Tongji University 4800 Caoan Road, Shanghai 201804, PR China

Tài liệu tham khảo

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