Privacy-Preserving Individual-Level COVID-19 Infection Prediction via Federated Graph Learning
Wenjie Fu, Huandong Wang, Chen Gao, Guanghua Liu, Yong Li, Tao Jiang

TL;DR
This paper introduces Falcon, a federated graph learning framework that predicts individual COVID-19 infection status while preserving user privacy through hypergraph structures, differential privacy, and a region-level model.
Contribution
The paper proposes a novel federated hypergraph neural network approach with privacy-preserving mechanisms for individual-level infection prediction.
Findings
Outperforms state-of-the-art algorithms in infection prediction accuracy.
Effectively protects user privacy against privacy attacks.
Balances prediction performance with privacy preservation.
Abstract
Accurately predicting individual-level infection state is of great value since its essential role in reducing the damage of the epidemic. However, there exists an inescapable risk of privacy leakage in the fine-grained user mobility trajectories required by individual-level infection prediction. In this paper, we focus on developing a framework of privacy-preserving individual-level infection prediction based on federated learning (FL) and graph neural networks (GNN). We propose Falcon, a Federated grAph Learning method for privacy-preserving individual-level infeCtion predictiON. It utilizes a novel hypergraph structure with spatio-temporal hyperedges to describe the complex interactions between individuals and locations in the contagion process. By organically combining the FL framework with hypergraph neural networks, the information propagation process of the graph machine learning…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · COVID-19 Digital Contact Tracing · Data-Driven Disease Surveillance
