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On the Communication Latency of Wireless Decentralized Learning

Abstract

We consider a wireless network comprising nn nodes located within a circular area of radius RR, which are participating in a decentralized learning algorithm to optimize a global objective function using their local datasets. To enable gradient exchanges across the network, we assume each node communicates only with a set of neighboring nodes, which are within a distance RnβR n^{-\beta} of itself, where β(0,12)\beta\in(0,\frac{1}{2}). We use tools from network information theory and random geometric graph theory to show that the communication delay for a single round of exchanging gradients on all the links throughout the network scales as O(n23ββlogn)\mathcal{O}\left(\frac{n^{2-3\beta}}{\beta\log n}\right), increasing (at different rates) with both the number of nodes and the gradient exchange threshold distance.

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