Decoupled Subgraph Federated Learning
Paper in proceeding, 2025

We address the challenge of federated learning on graph-structured data distributed across multiple clients. Specifically, we focus on the prevalent scenario of interconnected subgraphs, where interconnections between different clients play a critical role. We present a novel framework for this scenario, named FEDSTRUCT, that harnesses deep structural dependencies. To uphold privacy, unlike existing methods, FEDSTRUCT eliminates the necessity of sharing or generating sensitive node features or embeddings among clients. Instead, it leverages explicit global graph structure information to capture inter-node dependencies. We validate the effectiveness of FEDSTRUCT through experimental results conducted on six datasets for semi-supervised node classification, showcasing performance close to the centralized approach across various scenarios, including different data partitioning methods, varying levels of label availability, and number of clients.

Author

Javad Aliakbari

Chalmers, Electrical Engineering, Communication, Antennas and Optical Networks

Johan Östman

AI Sweden

Alexandre Graell Amat

Chalmers, Electrical Engineering, Communication, Antennas and Optical Networks

13th International Conference on Learning Representations Iclr 2025

87888-87919
9798331320850 (ISBN)

13th International Conference on Learning Representations, ICLR 2025
Singapore, Singapore,

Reliable and Secure Coded Edge Computing

Swedish Research Council (VR) (2020-03687), 2021-01-01 -- 2024-12-31.

Subject Categories (SSIF 2025)

Software Engineering

Robotics and automation

Computer Sciences

More information

Latest update

8/1/2025 1