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The Capacity of Quantum Neural Networks

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Abstract

Quantum neural networks (QNN) are a promising application of near-term quantum computers. We present an information theory of QNN’s expressive power, which we apply to an example optical QNN based on a Gaussian Boson Sampler.

© 2020 The Author(s)

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