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Autores principales: Chen, Chuan, Liao, Tianchi, Deng, Xiaojun, Wu, Zihou, Huang, Sheng, Zheng, Zibin
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2405.09839
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author Chen, Chuan
Liao, Tianchi
Deng, Xiaojun
Wu, Zihou
Huang, Sheng
Zheng, Zibin
author_facet Chen, Chuan
Liao, Tianchi
Deng, Xiaojun
Wu, Zihou
Huang, Sheng
Zheng, Zibin
contents In the field of heterogeneous federated learning (FL), the key challenge is to efficiently and collaboratively train models across multiple clients with different data distributions, model structures, task objectives, computational capabilities, and communication resources. This diversity leads to significant heterogeneity, which increases the complexity of model training. In this paper, we first outline the basic concepts of heterogeneous federated learning and summarize the research challenges in federated learning in terms of five aspects: data, model, task, device, and communication. In addition, we explore how existing state-of-the-art approaches cope with the heterogeneity of federated learning, and categorize and review these approaches at three different levels: data-level, model-level, and architecture-level. Subsequently, the paper extensively discusses privacy-preserving strategies in heterogeneous federated learning environments. Finally, the paper discusses current open issues and directions for future research, aiming to promote the further development of heterogeneous federated learning.
format Preprint
id arxiv_https___arxiv_org_abs_2405_09839
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Advances in Robust Federated Learning: A Survey with Heterogeneity Considerations
Chen, Chuan
Liao, Tianchi
Deng, Xiaojun
Wu, Zihou
Huang, Sheng
Zheng, Zibin
Machine Learning
In the field of heterogeneous federated learning (FL), the key challenge is to efficiently and collaboratively train models across multiple clients with different data distributions, model structures, task objectives, computational capabilities, and communication resources. This diversity leads to significant heterogeneity, which increases the complexity of model training. In this paper, we first outline the basic concepts of heterogeneous federated learning and summarize the research challenges in federated learning in terms of five aspects: data, model, task, device, and communication. In addition, we explore how existing state-of-the-art approaches cope with the heterogeneity of federated learning, and categorize and review these approaches at three different levels: data-level, model-level, and architecture-level. Subsequently, the paper extensively discusses privacy-preserving strategies in heterogeneous federated learning environments. Finally, the paper discusses current open issues and directions for future research, aiming to promote the further development of heterogeneous federated learning.
title Advances in Robust Federated Learning: A Survey with Heterogeneity Considerations
topic Machine Learning
url https://arxiv.org/abs/2405.09839