LGSIJun 25, 2021

Subgraph Federated Learning with Missing Neighbor Generation

arXiv:2106.13430v6284 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of collaborative graph learning without data sharing for applications with distributed subgraph data, representing an incremental advance in federated learning for graphs.

The paper tackles the problem of training graph mining models in a federated learning setting where each local system holds a biased subgraph, proposing FedSage and FedSage+ to integrate node features and handle missing links, with empirical results on four real-world datasets demonstrating effectiveness and efficiency.

Graphs have been widely used in data mining and machine learning due to their unique representation of real-world objects and their interactions. As graphs are getting bigger and bigger nowadays, it is common to see their subgraphs separately collected and stored in multiple local systems. Therefore, it is natural to consider the subgraph federated learning setting, where each local system holds a small subgraph that may be biased from the distribution of the whole graph. Hence, the subgraph federated learning aims to collaboratively train a powerful and generalizable graph mining model without directly sharing their graph data. In this work, towards the novel yet realistic setting of subgraph federated learning, we propose two major techniques: (1) FedSage, which trains a GraphSage model based on FedAvg to integrate node features, link structures, and task labels on multiple local subgraphs; (2) FedSage+, which trains a missing neighbor generator along FedSage to deal with missing links across local subgraphs. Empirical results on four real-world graph datasets with synthesized subgraph federated learning settings demonstrate the effectiveness and efficiency of our proposed techniques. At the same time, consistent theoretical implications are made towards their generalization ability on the global graphs.

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