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A federated learning framework for arbitrary spatio-temporal graph neural networks

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dc.contributor.author Yoon, Heeyong -
dc.contributor.author Chon, Kang-Wook -
dc.contributor.author Kim, Min-Soo -
dc.date.accessioned 2026-06-02T16:40:11Z -
dc.date.available 2026-06-02T16:40:11Z -
dc.date.created 2025-11-13 -
dc.date.issued 2025-12 -
dc.identifier.issn 0952-1976 -
dc.identifier.uri https://scholar.dgist.ac.kr/handle/20.500.11750/60394 -
dc.description.abstract The proliferation of mobile and Internet of Things (IoT) devices has resulted in a surge of time-series sensor data, posing significant challenges for centralized data collection and processing. This challenge has driven the adoption of edge computing, which offloads data processing to mid-level servers located at the edge of the Internet, thereby reducing computation and bandwidth demands. Federated learning has emerged as a promising method for training models in edge-computing environments. Recently, spatio-temporal graph neural networks (STGNNs) have shown impressive performance in time-series prediction, yet their application in edge computing is limited by the complexity of adapting them to distributed environments. To address this gap, we propose FedSTGNN (Federated Spatio-Temporal Graph Neural Network), a universal framework that converts existing centralized STGNN models into a federated learning version. We formulate the common STGNN training process using matrix operations, employ graph-based imputation methods to handle missing sensor values at edge servers, and facilitate the transition from centralized to federated STGNNs. Our comprehensive evaluations demonstrate that FedSTGNN not only preserves the prediction accuracy of the original STGNN models but is also significantly more network-efficient than the competing model. Furthermore, the framework proves its robustness in challenging real-world scenarios, including sparse graphs, long-term forecasting, and dynamic server participation. Our work presents a practical, robust, and universal solution for deploying STGNNs into various edge computing applications. -
dc.language English -
dc.publisher PERGAMON-ELSEVIER SCIENCE LTD -
dc.title A federated learning framework for arbitrary spatio-temporal graph neural networks -
dc.type Article -
dc.identifier.doi 10.1016/j.engappai.2025.112801 -
dc.identifier.wosid 001601106800003 -
dc.identifier.scopusid 2-s2.0-105022179627 -
dc.identifier.bibliographicCitation ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, v.162 -
dc.description.isOpenAccess TRUE -
dc.subject.keywordAuthor Machine learning framework for arbitrary models -
dc.subject.keywordAuthor Spatio-temporal graph neural network -
dc.subject.keywordAuthor Federated learning -
dc.subject.keywordAuthor Edge computing -
dc.subject.keywordAuthor Vehicle traffic data -
dc.subject.keywordAuthor Weather data -
dc.subject.keywordPlus TRAFFIC FLOW -
dc.subject.keywordPlus EDGE -
dc.citation.title ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE -
dc.citation.volume 162 -
dc.description.journalRegisteredClass scie -
dc.description.journalRegisteredClass scopus -
dc.relation.journalResearchArea Automation & Control Systems; Computer Science; Engineering -
dc.relation.journalWebOfScienceCategory Automation & Control Systems; Computer Science, Artificial Intelligence; Engineering, Multidisciplinary; Engineering, Electrical & Electronic -
dc.type.docType Article -
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