2019
DOI: 10.1016/j.adhoc.2019.101913
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Machine learning for wireless communications in the Internet of Things: A comprehensive survey

Abstract: The Internet of Things (IoT) is expected to require more effective and efficient wireless communications than ever before. For this reason, techniques such as spectrum sharing, dynamic spectrum access, extraction of signal intelligence and optimized routing will soon become essential components of the IoT wireless communication paradigm. In this vision, IoT devices must be able to not only learn to autonomously extract spectrum knowledge on-the-fly from the network but also leverage such knowledge to dynamical… Show more

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Cited by 220 publications
(103 citation statements)
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“…Finally, communication networks are moving towards being fully autonomic and self-managing [101,102]. To this end, machine learning and deep learning algorithms have been proposed to determine configurations of wireless parameters [103,104]. This represents a data-driven approach that makes decisions based on observations (failure events, performance metrics) collected from the network.…”
Section: Future Workmentioning
confidence: 99%
“…Finally, communication networks are moving towards being fully autonomic and self-managing [101,102]. To this end, machine learning and deep learning algorithms have been proposed to determine configurations of wireless parameters [103,104]. This represents a data-driven approach that makes decisions based on observations (failure events, performance metrics) collected from the network.…”
Section: Future Workmentioning
confidence: 99%
“…Traditional supervised learning methods, which learn a function that maps the input data to some desired output class label, is only effective when sufficient labeled data is available. On the contrary, generative models, e.g., GAN and variational autoencoder (VAE), can learn the joint probability of the input data and labels simultaneously via Bayes rule [56]. Therefore, GANs and VAEs are well suitable for learning in wireless environments since most current mobile systems generate unlabeled or semi-labeled data.…”
Section: Gan-based Mobile Data Augmentationmentioning
confidence: 99%
“…Many variants of the RPL algorithm have been proposed in various literatures for optimizing the route selection, discovering efficient route and managing the topology of the network. For maintaining the historical and current information regarding the link quality and the routing paths, utilization of tweaking routing procedure was also not effective [15]. In general a highly efficient, accurate and dynamic link quality estimation procedure is essential as part of routing protocol for selecting the optimal route from source to destination in a time varying network scenario.…”
Section: Related Workmentioning
confidence: 99%