AI RESEARCH
Profiling Privacy Preservation Against Gradient Inversion Attacks in Tabular Federated Learning
arXiv CS.LG
•
ArXi:2606.00986v1 Announce Type: new Federated learning (FL) enables multiple data holders to train machine learning models collaboratively without centralizing raw data, making it useful in privacy sensitive domains such as healthcare and institutional data sharing. FL keeps data local to clients while communicating only model updates, such as gradients or model deltas. Nevertheless, these updates can expose private client data through gradient inversion attacks (GIAs). We study this risk for tabular FL under an honest-but-curious server threat model across FL protocols, client batch sizes