Data Mining in Transportation Networks with Graph Neural Networks: A Review and Outlook
Jiawei Xue, Ruichen Tan, Jianzhu Ma, Satish V. Ukkusuri

TL;DR
This paper reviews recent advances in applying graph neural networks to transportation network data mining, emphasizing new progress in prediction and operation tasks since 2023, and discusses industry involvement and future opportunities.
Contribution
It provides a comprehensive summary of GNN applications in transportation networks, focusing on recent developments since 2023 across prediction, operation, and industry sectors.
Findings
GNNs have been increasingly applied to transportation tasks since 2016.
Recent studies focus on prediction, operation, and industry involvement.
Resources like datasets and code are compiled to support further research.
Abstract
Data mining in transportation networks (DMTNs) refers to using diverse types of spatio-temporal data for various transportation tasks, including pattern analysis, traffic prediction, and traffic controls. Graph neural networks (GNNs) are essential in many DMTN problems due to their capability to represent spatial correlations between entities. Between 2016 and 2024, the notable applications of GNNs in DMTNs have extended to multiple fields such as traffic prediction and operation. However, existing reviews have primarily focused on traffic prediction tasks. To fill this gap, this study provides a timely and insightful summary of GNNs in DMTNs, highlighting new progress in prediction and operation from academic and industry perspectives since 2023. First, we present and analyze various DMTN problems, followed by classical and recent GNN models. Second, we delve into key works in three…
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Taxonomy
TopicsGraph Theory and Algorithms · Cognitive Computing and Networks · Advanced Graph Neural Networks
