The power of quantum neural networks

  • Amira Abbas
  • David Sutter
  • Stefan Woerner
Article

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  • A class of quantum neural networks is presented that outperforms comparable classical feedforward networks. They achieve a higher capacity in terms of effective dimension and at the same time train faster, suggesting a quantum advantage.

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    • David Sutter
    • Stefan Woerner
    Article
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