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On Maintaining Linear Convergence of Distributed Learning and Optimization Under Limited Communication

Sindri Magnússon, Hossein Shokri‐Ghadikolaei, Na Li

2020IEEE Transactions on Signal Processing75 citationsDOIOpen Access PDF

Abstract

In distributed optimization and machine learning, multiple nodes coordinate to solve large problems. To do this, the nodes need to compress important algorithm information to bits so that it can be communicated over a digital channel. The communication time of these algorithms follows a complex interplay between a) the algorithm's convergence properties, b) the compression scheme, and c) the transmission rate offered by the digital channel. We explore these relationships for a general class of linearly convergent distributed algorithms. In particular, we illustrate how to design quantizers for these algorithms that compress the communicated information to a few bits while still preserving the linear convergence. Moreover, we characterize the communication time of these algorithms as a function of the available transmission rate. We illustrate our results on learning algorithms using different communication structures, such as decentralized algorithms where a single master coordinates information from many workers and fully distributed algorithms where only neighbours in a communication graph can communicate. We conclude that a co-design of machine learning and communication protocols are mandatory to flourish machine learning over networks.

Topics & Concepts

Computer scienceDistributed learningRate of convergenceConvergence (economics)GraphDistributed algorithmAlgorithmTransmission (telecommunications)Theoretical computer scienceCommunications systemChannel (broadcasting)Distributed computingComputer networkEconomicsTelecommunicationsPsychologyEconomic growthPedagogyDistributed Sensor Networks and Detection AlgorithmsCooperative Communication and Network CodingStochastic Gradient Optimization Techniques
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