LGOct 18, 2016

Federated Learning: Strategies for Improving Communication Efficiency

arXiv:1610.05492v25409 citations
Originality Incremental advance
AI Analysis

This addresses communication efficiency for federated learning systems, particularly on mobile devices, and is incremental as it builds on existing methods with specific optimizations.

The paper tackles the problem of high communication costs in federated learning by proposing structured and sketched updates, which reduce communication by two orders of magnitude in experiments on convolutional and recurrent networks.

Federated Learning is a machine learning setting where the goal is to train a high-quality centralized model while training data remains distributed over a large number of clients each with unreliable and relatively slow network connections. We consider learning algorithms for this setting where on each round, each client independently computes an update to the current model based on its local data, and communicates this update to a central server, where the client-side updates are aggregated to compute a new global model. The typical clients in this setting are mobile phones, and communication efficiency is of the utmost importance. In this paper, we propose two ways to reduce the uplink communication costs: structured updates, where we directly learn an update from a restricted space parametrized using a smaller number of variables, e.g. either low-rank or a random mask; and sketched updates, where we learn a full model update and then compress it using a combination of quantization, random rotations, and subsampling before sending it to the server. Experiments on both convolutional and recurrent networks show that the proposed methods can reduce the communication cost by two orders of magnitude.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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