Fully Decentralized, Scalable Gaussian Processes for Multi-Agent Federated Learning
Kontoudis, George P., Stilwell, Daniel J.
In this paper, we propose decentralized and scalable algorithms for Gaussian process (GP) training and prediction in multi-agent systems. To decentralize the implementation of GP training optimization algorithms, we employ the alternating direction method of multipliers (ADMM). A closed-form solution of the decentralized proximal ADMM is provided for the case of GP hyper-parameter training with maximum likelihood estimation. Multiple aggregation techniques for GP prediction are decentralized with the use of iterative and consensus methods. In addition, we propose a covariance-based nearest neighbor selection strategy that enables a subset of agents to perform predictions. The efficacy of the proposed methods is illustrated with numerical experiments on synthetic and real data.
Mar-5-2022
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- North America > United States
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- Massachusetts > Middlesex County
- Cambridge (0.04)
- Florida > Palm Beach County
- Boca Raton (0.04)
- Europe > United Kingdom
- England > Cambridgeshire > Cambridge (0.04)
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- Research Report (0.49)
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- Information Technology > Security & Privacy (1.00)