Federated Domain Generalization: A Survey
Ying Li, Xingwei Wang, Rongfei Zeng, Praveen Kumar Donta, Ilir Murturi, Min Huang, and Schahram Dustdar

TL;DR
This survey reviews recent advances in federated domain generalization, a field combining federated learning and domain generalization to enable models to adapt to unseen data distributions across distributed sources.
Contribution
It is the first comprehensive survey that categorizes and discusses recent FDG methodologies, datasets, and future research directions.
Findings
Categorized FDG methods into four classes.
Summarized key datasets and benchmarks.
Identified open challenges and future topics.
Abstract
Machine learning typically relies on the assumption that training and testing distributions are identical and that data is centrally stored for training and testing. However, in real-world scenarios, distributions may differ significantly and data is often distributed across different devices, organizations, or edge nodes. Consequently, it is imperative to develop models that can effectively generalize to unseen distributions where data is distributed across different domains. In response to this challenge, there has been a surge of interest in federated domain generalization (FDG) in recent years. FDG combines the strengths of federated learning (FL) and domain generalization (DG) techniques to enable multiple source domains to collaboratively learn a model capable of directly generalizing to unseen domains while preserving data privacy. However, generalizing the federated model under…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Privacy-Preserving Technologies in Data
