Distributed Adaptive Learning Under Communication Constraints
Marco Carpentiero, Vincenzo Matta, Ali H. Sayed

TL;DR
This paper introduces a novel distributed adaptive learning algorithm called ACTC that efficiently operates under communication constraints by compressing exchanged information, suitable for nonstationary environments and directed network topologies.
Contribution
The work presents a new diffusion strategy with constant step-size, stochastic compression, and directed graphs, requiring only network-level strong convexity, advancing adaptive distributed learning under communication limits.
Findings
Achieves convergence with compressed communication in nonstationary settings
Supports directed graphs and general combination policies
Requires only network-level strong convexity
Abstract
This work examines adaptive distributed learning strategies designed to operate under communication constraints. We consider a network of agents that must solve an online optimization problem from continual observation of streaming data. The agents implement a distributed cooperative strategy where each agent is allowed to perform local exchange of information with its neighbors. In order to cope with communication constraints, the exchanged information must be unavoidably compressed. We propose a diffusion strategy nicknamed as ACTC (Adapt-Compress-Then-Combine), which relies on the following steps: i) an adaptation step where each agent performs an individual stochastic-gradient update with constant step-size; ii) a compression step that leverages a recently introduced class of stochastic compression operators; and iii) a combination step where each agent combines the compressed…
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Taxonomy
TopicsCooperative Communication and Network Coding · Stochastic Gradient Optimization Techniques · Distributed Sensor Networks and Detection Algorithms
MethodsDiffusion
