Journal of Signal Processing
Online ISSN : 1880-1013
Print ISSN : 1342-6230
ISSN-L : 1342-6230
ATLAS: Adaptive Tuning of Layer Sharing for Multi-Task Federated Learning
Fumiya AraiItsuki AkenoSyusei KawaiTakao MarukameTetsuya AsaiKota Ando
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2025 年 29 巻 4 号 p. 87-90

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Federated Learning (FL) enables distributed learning by sharing model parameters while preserving data privacy. While it proves effective for single tasks, its application to multiple tasks remains challenging. This study proposes Adaptive Tuning of Layer Sharing (ATLAS), a method that dynamically selects shared layers and optimizes task weighting based on task similarity. ATLAS improves the efficiency and accuracy of multi-task FL while reducing communication costs.

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© 2025 Research Institute of Signal Processing, Japan
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