2017
DOI: 10.1109/mwc.2016.1500356wc
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Machine Learning Paradigms for Next-Generation Wireless Networks

Abstract: Next-generation wireless networks are expected to support extremely high data rates and radically new applications, which require a new wireless radio technology paradigm. The challenge is that of assisting the radio in intelligent adaptive learning and decision making, so that the diverse requirements of next-generation wireless networks can be satisfied. Machine learning is one of the most promising artificial intelligence tools, conceived to support smart radio terminals. Future smart 5G mobile terminals ar… Show more

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Cited by 958 publications
(485 citation statements)
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References 19 publications
(30 reference statements)
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“…Actually, ML can be widely used in modeling a number of technical problems including large scale MIMOs, D2D networks as well as HetNets [34]. In particular, as THz communication consists of access points in either ubiquitous WiFi networks or base-station clustering, unsupervised learning strategies are required.…”
Section: Terahertz Communications For Mobile Hetnetsmentioning
confidence: 99%
“…Actually, ML can be widely used in modeling a number of technical problems including large scale MIMOs, D2D networks as well as HetNets [34]. In particular, as THz communication consists of access points in either ubiquitous WiFi networks or base-station clustering, unsupervised learning strategies are required.…”
Section: Terahertz Communications For Mobile Hetnetsmentioning
confidence: 99%
“…Machine learning (ML) techniques constitute a promising solution for network management and energy savings in cellular networks. According to [66,67], they can be categorized as supervised, unsupervised, or reinforcement learning-based. Supervised and unsupervised learning, respectively, indicate whether the samples from the dataset are labelled or not.…”
Section: Machine Learningmentioning
confidence: 99%
“…This is pretty common in practical cases and, as such, it may eventually become the preferred learning technology for many application domains. The basic concept of ML algorithms and the corresponding applications according to the category of supervised, unsupervised, and reinforcement learning is presented in [66]. ML can be used in modeling various technical problems for next-generation systems.…”
Section: Machine Learningmentioning
confidence: 99%
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“…Despite its simplicity, this method has proven to be very effective in many real classification problems. As an example, Jian et al report how a K-NN classifier can be used to optimize the behavior of 5G networks, in terms of handover selection or energy savings [25]. The training time for the different classifiers is in the order of tens of minutes on a Dell Latitude E5530 running Ubuntu 12.04 LTS 64-bit, Intel Core i5-3320M CPU @ 2.60GHz processor and 8 GB of memory.…”
Section: Training the Freeze Predictor Off-linementioning
confidence: 99%