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paperarXivTrust 82 · PrimaryPublished 5d agoLive · 3d ago

SP-CACW: Convergence-Aware Client Weighting for Selfish Personalized Learning

Collaborative learning is sustainable only when it benefits each participant. Standard federated learning optimizes a global average objective, which can under perform for clients whose data distributions differ substantially from the population. We study selfish personalization: how a designated target client can use peer gradients to minimize its own risk while avoiding negative transfer. We propose SP-CACW, a convergence-aware client-weighting framework that selects aggregation weights by minimizing an upper bound on the target client's convergence error. The resulting rule explicitly trade

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