Transfer learning in hybrid classical-quantum neural networks

17 Dec 2019Andrea MariThomas R. BromleyJosh IzaacMaria SchuldNathan Killoran

We extend the concept of transfer learning, widely applied in modern machine learning algorithms, to the emerging context of hybrid neural networks composed of classical and quantum elements. We propose different implementations of hybrid transfer learning, but we focus mainly on the paradigm in which a pre-trained classical network is modified and augmented by a final variational quantum circuit... (read more)

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