The quest for a Quantum Neural Network

@article{Schuld2014TheQF,
  title={The quest for a Quantum Neural Network},
  author={M. Schuld and I. Sinayskiy and Francesco Petruccione},
  journal={Quantum Information Processing},
  year={2014},
  volume={13},
  pages={2567-2586}
}
With the overwhelming success in the field of quantum information in the last decades, the ‘quest’ for a Quantum Neural Network (QNN) model began in order to combine quantum computing with the striking properties of neural computing. This article presents a systematic approach to QNN research, which so far consists of a conglomeration of ideas and proposals. Concentrating on Hopfield-type networks and the task of associative memory, it outlines the challenge of combining the nonlinear… Expand
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