Adaptive Gradient Sparsification for Efficient Federated Learning: An Online Learning Approach
January 14, 2020 ยท Declared Dead ยท ๐ IEEE International Conference on Distributed Computing Systems
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Authors
Pengchao Han, Shiqiang Wang, Kin K. Leung
arXiv ID
2001.04756
Category
cs.LG: Machine Learning
Cross-listed
cs.DC,
math.OC,
stat.ML
Citations
217
Venue
IEEE International Conference on Distributed Computing Systems
Last Checked
4 months ago
Abstract
Federated learning (FL) is an emerging technique for training machine learning models using geographically dispersed data collected by local entities. It includes local computation and synchronization steps. To reduce the communication overhead and improve the overall efficiency of FL, gradient sparsification (GS) can be applied, where instead of the full gradient, only a small subset of important elements of the gradient is communicated. Existing work on GS uses a fixed degree of gradient sparsity for i.i.d.-distributed data within a datacenter. In this paper, we consider adaptive degree of sparsity and non-i.i.d. local datasets. We first present a fairness-aware GS method which ensures that different clients provide a similar amount of updates. Then, with the goal of minimizing the overall training time, we propose a novel online learning formulation and algorithm for automatically determining the near-optimal communication and computation trade-off that is controlled by the degree of gradient sparsity. The online learning algorithm uses an estimated sign of the derivative of the objective function, which gives a regret bound that is asymptotically equal to the case where exact derivative is available. Experiments with real datasets confirm the benefits of our proposed approaches, showing up to $40\%$ improvement in model accuracy for a finite training time.
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