LGCVSep 15, 2025

FedDAF: Federated Domain Adaptation Using Model Functional Distance

arXiv:2509.11819v1h-index: 4
Originality Incremental advance
AI Analysis

This addresses privacy-preserving model adaptation for clients in federated learning with scarce data, though it appears incremental as it builds on prior FDA work.

The paper tackles the problem of federated domain adaptation with both domain shifts and limited labeled target data, proposing FedDAF, which uses model functional distance for similarity-based aggregation, and demonstrates superior test accuracy over existing methods on real-world datasets.

Federated Domain Adaptation (FDA) is a federated learning (FL) approach that improves model performance at the target client by collaborating with source clients while preserving data privacy. FDA faces two primary challenges: domain shifts between source and target data and limited labeled data at the target. Most existing FDA methods focus on domain shifts, assuming ample target data, yet often neglect the combined challenges of both domain shifts and data scarcity. Moreover, approaches that address both challenges fail to prioritize sharing relevant information from source clients according to the target's objective. In this paper, we propose FedDAF, a novel approach addressing both challenges in FDA. FedDAF uses similarity-based aggregation of the global source model and target model by calculating model functional distance from their mean gradient fields computed on target data. This enables effective model aggregation based on the target objective, constructed using target data, even with limited data. While computing model functional distance between these two models, FedDAF computes the angle between their mean gradient fields and then normalizes with the Gompertz function. To construct the global source model, all the local source models are aggregated using simple average in the server. Experiments on real-world datasets demonstrate FedDAF's superiority over existing FL, PFL, and FDA methods in terms of achieving better test accuracy.

Foundations

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