journal article Oct 01, 2024

An instance-based transfer learning model with attention mechanism for freight train travel time prediction in the China–Europe railway express

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Published
Oct 01, 2024
Vol/Issue
251
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123989
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Cite This Article
Jingwei Guo, Wei Wang, Jiayi Guo, et al. (2024). An instance-based transfer learning model with attention mechanism for freight train travel time prediction in the China–Europe railway express. Expert Systems with Applications, 251, 123989. https://doi.org/10.1016/j.eswa.2024.123989
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