A deep generative approach for crash frequency model with heterogeneous imbalanced data
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Title
A deep generative approach for crash frequency model with heterogeneous imbalanced data
Authors
Keywords
Crash frequency model, Imbalanced crash data, Augmented variational autoencoder, Machine learning
Journal
Analytic Methods in Accident Research
Volume 34, Issue -, Pages 100212
Publisher
Elsevier BV
Online
2022-01-25
DOI
10.1016/j.amar.2022.100212
References
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