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Toward Enhancing Representation Learning in Federated Multi-Task Settings

arXiv:2602.01626v11 citationsh-index: 7
Originality Incremental advance
AI Analysis

This work addresses the challenge of handling model and task heterogeneity in federated learning for users with diverse tasks, representing an incremental advancement over existing methods.

The paper tackled the problem of limited applicability in federated multi-task learning due to assumptions of model congruity, proposing a shared representation space approach that achieved substantial improvements and robust performance across heterogeneous settings.

Federated multi-task learning (FMTL) seeks to collaboratively train customized models for users with different tasks while preserving data privacy. Most existing approaches assume model congruity (i.e., the use of fully or partially homogeneous models) across users, which limits their applicability in realistic settings. To overcome this limitation, we aim to learn a shared representation space across tasks rather than shared model parameters. To this end, we propose Muscle loss, a novel contrastive learning objective that simultaneously aligns representations from all participating models. Unlike existing multi-view or multi-model contrastive methods, which typically align models pairwise, Muscle loss can effectively capture dependencies across tasks because its minimization is equivalent to the maximization of mutual information among all the models' representations. Building on this principle, we develop FedMuscle, a practical and communication-efficient FMTL algorithm that naturally handles both model and task heterogeneity. Experiments on diverse image and language tasks demonstrate that FedMuscle consistently outperforms state-of-the-art baselines, delivering substantial improvements and robust performance across heterogeneous settings.

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