AI RESEARCH
Federated Nested Learning: Collaborative Training of Self-Referential Memories for Test-Time Adaptation
arXiv CS.LG
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ArXi:2605.16350v1 Announce Type: new We rethink Federated Learning (FL) from a nested learning perspective, framing the core challenge as how to collaboratively learn optimization rules, not just static models, to tackle Non-IID client data. To address this, we propose Federated Nested Learning (FedNL), a novel framework that reformulates FL as a three-level nested optimization system. FedNL embeds Titans-based linear attention into FL, enabling clients to perform lightweight, zero-shot test-time adaptation by treating a delta rule as an online gradient step.