Quantum enhanced cross-validation for near-optimal neural networks architecture selection

27 Aug 2018Priscila G. M. dos SantosRodrigo S. SousaIsmael C. S. AraujoAdenilton J. da Silva

This paper proposes a quantum-classical algorithm to evaluate and select classical artificial neural networks architectures. The proposed algorithm is based on a probabilistic quantum memory and the possibility to train artificial neural networks in superposition... (read more)

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