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arxiv: 2406.06655 · v1 · pith:CL7HSWRBnew · submitted 2024-06-10 · 💻 cs.LG · cs.AI· cs.DC

Fed-Sophia: A Communication-Efficient Second-Order Federated Learning Algorithm

classification 💻 cs.LG cs.AIcs.DC
keywords second-ordercurvaturefed-sophiafederatedinformationlearningmethodaddition
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Federated learning is a machine learning approach where multiple devices collaboratively learn with the help of a parameter server by sharing only their local updates. While gradient-based optimization techniques are widely adopted in this domain, the curvature information that second-order methods exhibit is crucial to guide and speed up the convergence. This paper introduces a scalable second-order method, allowing the adoption of curvature information in federated large models. Our method, coined Fed-Sophia, combines a weighted moving average of the gradient with a clipping operation to find the descent direction. In addition to that, a lightweight estimation of the Hessian's diagonal is used to incorporate the curvature information. Numerical evaluation shows the superiority, robustness, and scalability of the proposed Fed-Sophia scheme compared to first and second-order baselines.

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