A Very Brief Introduction to Machine Learning With Applications to Communication Systems

@article{Simeone2018AVB,
  title={A Very Brief Introduction to Machine Learning With Applications to Communication Systems},
  author={Osvaldo Simeone},
  journal={IEEE Transactions on Cognitive Communications and Networking},
  year={2018},
  volume={4},
  pages={648-664}
}
  • O. Simeone
  • Published 7 August 2018
  • Computer Science
  • IEEE Transactions on Cognitive Communications and Networking
Given the unprecedented availability of data and computing resources, there is widespread renewed interest in applying data-driven machine learning methods to problems for which the development of conventional engineering solutions is challenged by modeling or algorithmic deficiencies. This tutorial-style paper starts by addressing the questions of why and when such techniques can be useful. It then provides a high-level introduction to the basics of supervised and unsupervised learning. For… 

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