Poster
Janus: Dual-Server Multi-Round Secure Aggregation with Verifiability for Federated Learning
Lang Pu · Jingjing Gu · Chao Lin · Xinyi Huang
East Exhibition Hall A-B #E-706
Federated Learning (FL) enables collaborative model training without sharing raw data. To keep individual updates private, Secure Aggregation (SA) combines updates in a way that hides each user's contribution. However, existing SA schemes struggle with user dropout, are prone to attacks causing model inconsistency, and lack verifiability.We propose Janus, a new SA method that overcomes these challenges through several key innovations. First, it introduces a dual-server architecture that splits responsibilities, improving both security and flexibility. Second, it uses a novel cryptographic tool called Separable Homomorphic Commitment, enabling users to efficiently verify aggregation correctness. Third, Janus supports model-independent use and scales efficiently, even with changing user participation.Our theoretical analysis and experimental results demonstrate that Janus advances secure federated learning with strong privacy, low overhead, and robust performance across diverse settings.