Fractional Programming for Communication Systems—Part I: Power Control and Beamforming

@article{Shen2018FractionalPF,
  title={Fractional Programming for Communication Systems—Part I: Power Control and Beamforming},
  author={K. Shen and W. Yu},
  journal={IEEE Transactions on Signal Processing},
  year={2018},
  volume={66},
  pages={2616-2630}
}
  • K. Shen, W. Yu
  • Published 2018
  • Computer Science, Mathematics
  • IEEE Transactions on Signal Processing
  • Fractional programming (FP) refers to a family of optimization problems that involve ratio term(s). This two-part paper explores the use of FP in the design and optimization of communication systems. Part I of this paper focuses on FP theory and on solving continuous problems. The main theoretical contribution is a novel quadratic transform technique for tackling the multiple-ratio concave–convex FP problem—in contrast to conventional FP techniques that mostly can only deal with the single… CONTINUE READING
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