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Multi-objective methods in Federated Learning: A survey and taxonomy

Multi-objective methods in Federated Learning: A survey and taxonomy

来源:Arxiv_logoArxiv
英文摘要

The Federated Learning paradigm facilitates effective distributed machine learning in settings where training data is decentralized across multiple clients. As the popularity of the strategy grows, increasingly complex real-world problems emerge, many of which require balancing conflicting demands such as fairness, utility, and resource consumption. Recent works have begun to recognise the use of a multi-objective perspective in answer to this challenge. However, this novel approach of combining federated methods with multi-objective optimisation has never been discussed in the broader context of both fields. In this work, we offer a first clear and systematic overview of the different ways the two fields can be integrated. We propose a first taxonomy on the use of multi-objective methods in connection with Federated Learning, providing a targeted survey of the state-of-the-art and proposing unambiguous labels to categorise contributions. Given the developing nature of this field, our taxonomy is designed to provide a solid basis for further research, capturing existing works while anticipating future additions. Finally, we outline open challenges and possible directions for further research.

Maria Hartmann、Grégoire Danoy、Pascal Bouvry

计算技术、计算机技术

Maria Hartmann,Grégoire Danoy,Pascal Bouvry.Multi-objective methods in Federated Learning: A survey and taxonomy[EB/OL].(2025-07-09)[2025-07-18].https://arxiv.org/abs/2502.03108.点此复制

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