Personalized Subgraph Federated Learning with Differentiable Auxiliary Projections
Journal:
arXiv
Published Date:
May 29, 2025
Abstract
Federated learning (FL) on graph-structured data typically faces non-IID
challenges, particularly in scenarios where each client holds a distinct
subgraph sampled from a global graph. In this paper, we introduce Federated
learning with Auxiliary projections (FedAux), a personalized subgraph FL
framework that learns to align, compare, and aggregate heterogeneously
distributed local models without sharing raw data or node embeddings. In
FedAux, each client jointly trains (i) a local GNN and (ii) a learnable
auxiliary projection vector (APV) that differentiably projects node embeddings
onto a 1D space. A soft-sorting operation followed by a lightweight 1D
convolution refines these embeddings in the ordered space, enabling the APV to
effectively capture client-specific information. After local training, these
APVs serve as compact signatures that the server uses to compute inter-client
similarities and perform similarity-weighted parameter mixing, yielding
personalized models while preserving cross-client knowledge transfer. Moreover,
we provide rigorous theoretical analysis to establish the convergence and
rationality of our design. Empirical evaluations across diverse graph
benchmarks demonstrate that FedAux substantially outperforms existing baselines
in both accuracy and personalization performance.