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Quantum Circuit CC^*-algebra Net

Abstract

This paper introduces quantum circuit CC^*-algebra net, which provides a connection between CC^*-algebra nets proposed in classical machine learning and quantum circuits. Using CC^*-algebra, a generalization of the space of complex numbers, we can represent quantum gates as weight parameters of a neural network. By introducing additional parameters, we can induce interaction among multiple circuits constructed by quantum gates. This interaction enables the circuits to share information among them, which contributes to improved generalization performance in machine learning tasks. As an application, we propose to use the quantum circuit CC^*-algebra net to encode classical data into quantum states, which enables us to integrate classical data into quantum algorithms. Numerical results demonstrate that the interaction among circuits improves performance significantly in image classification, and encoded data by the quantum circuit CC^*-algebra net are useful for downstream quantum machine learning tasks.

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