Adaptive Multi-Faceted Service Capabilities Co-Prediction for Nationwide Terminal Stations in Logistics

Authors

  • Shuxin Zhong Hong Kong University of Science and Technology (Guanzhou)
  • Kimberly Liu University of Pennsylvania,
  • Wenjun Lyu Rutgers University
  • Haotian Wang JD Logistic
  • Guang Wang Florida State University
  • Yunhuai Liu Peking University
  • Tian He JD Logistic
  • Yu Yang Lehigh University
  • Desheng Zhang Rutgers University

DOI:

https://doi.org/10.1609/aaai.v39i27.35079

Abstract

Estimating service capabilities for logistics terminal stations is essential for guiding operations adjustments to enhance customer experience. However, existing studies often focus on isolated metrics like on-time delivery or complaint rates, each reflecting a specific aspect of service capabilities. To provide a more comprehensive evaluation, we design AdaService, an Adaptive multi-faceted Service capabilities co-estimation framework. We begin by constructing Multi-faceted Hypergraph to encode stations using multiple performance metrics. We then introduce a Multi-faceted Hypergraph Convolution Network (MHCN) to capture the heterogeneous service capabilities across stations, providing a comprehensive capabilities representation. Finally, we apply an Adaptive Multi-faceted Estimation module that uses multi-task learning to model dynamic interactions among these metrics, enhancing predictive accuracy. Extensive evaluation with real-world data collected from nationwide stations in a leading logistics company in China demonstrates that AdaService significantly outperforms state-of-the-art methods, improving estimation accuracy for on-time delivery, on-time pick-up, and complaint rates by up to 18.98%, 9.30%, and 39.62%.

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Published

2025-04-11

How to Cite

Zhong, S., Liu, K., Lyu, W., Wang, H., Wang, G., Liu, Y., … Zhang, D. (2025). Adaptive Multi-Faceted Service Capabilities Co-Prediction for Nationwide Terminal Stations in Logistics. Proceedings of the AAAI Conference on Artificial Intelligence, 39(27), 28557–28565. https://doi.org/10.1609/aaai.v39i27.35079