Wireless for Machine Learning: A Survey

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Abstract

As data generation increasingly takes place on devices without a wired connection, Machine Learning (ML) related traffic will be ubiquitous in wireless networks. Many studies have shown that traditional wireless protocols are highly inefficient or unsustainable to support ML, which creates the need for new wireless communication methods. In this monograph, we give a comprehensive review of the state-of-the-art wireless methods that are specifically designed to support ML services over distributed datasets. Currently, there are two clear themes within the literature, analog over-the-air computation and digital radio resource management optimized for ML. This survey gives an introduction to these methods, reviews the most important works, highlights open problems, and discusses application scenarios.

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CITATION STYLE

APA

Hellström, H., da Silva, J. M. B., Amiri, M. M., Chen, M., Fodor, V., Vincent Poor, H., & Fischione, C. (2022, June 9). Wireless for Machine Learning: A Survey. Foundations and Trends in Signal Processing. Now Publishers Inc. https://doi.org/10.1561/2000000114

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