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Decentralised learning with distributed gradient descent and random features

Abstract:
We investigate the generalisation performance of Distributed Gradient Descent with implicit regularisation and random features in the homogenous setting where a network of agents are given data sampled independently from the same unknown distribution. Along with reducing the memory footprint, random features are particularly convenient in this setting as they provide a common parameterisation across agents that allows to overcome previous difficulties in implementing decentralised kernel regression. Under standard source and capacity assumptions, we establish high probability bounds on the predictive performance for each agent as a function of the step size, number of iterations, inverse spectral gap of the communication matrix and number of random features. By tuning these parameters, we obtain statistical rates that are minimax optimal with respect to the total number of samples in the network. The algorithm provides a linear improvement over single-machine gradient descent in memory cost and, when agents hold enough data with respect to the network size and inverse spectral gap, a linear speed up in computational run-time for any network topology. We present simulations that show how the number of random features, iterations and samples impact predictive performance.
Publication status:
Published
Peer review status:
Peer reviewed

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Department:
STATISTICS
Sub department:
Statistics
Role:
Author
ORCID:
0000-0001-7772-4160


Publisher:
Proceedings of Machine Learning Research
Host title:
Proceedings of the 37th International Conference on Machine Learning
Volume:
119
Pages:
8105-8115
Series:
Proceedings of Machine Learning Research
Publication date:
2020-11-21
Acceptance date:
2020-06-01
Event title:
Thirty-seventh International Conference on Machine Learning
Event location:
Virtual event
Event website:
https://icml.cc/
Event start date:
2020-07-12
Event end date:
2020-07-18


Language:
English
Keywords:
Pubs id:
1118193
Local pid:
pubs:1118193
Deposit date:
2020-07-10
ARK identifier:

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