FedIGL: Federated Invariant Graph Learning for Non-IID Graphs
–Neural Information Processing Systems
Existing approaches usually assume shared generic knowledge (e.g., prototypes, spectral features) via aggregating local structures statistically to alleviate structural heterogeneity. However, imposing overly strict assumptions about the presumed correlation between structural features and the global objective often fails in generalizing to local tasks, leading to suboptimal performance.
Neural Information Processing Systems
Jun-13-2026, 19:07:53 GMT
- Technology: