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Quantum circuit-like learning: A fast and scalable classical machine-learning algorithm with similar performance to quantum circuit learning (2003.10667v2)

Published 24 Mar 2020 in quant-ph and cs.LG

Abstract: The application of near-term quantum devices to ML has attracted much attention. In one such attempt, Mitarai et al. (2018) proposed a framework to use a quantum circuit for supervised ML tasks, which is called quantum circuit learning (QCL). Due to the use of a quantum circuit, QCL can employ an exponentially high-dimensional Hilbert space as its feature space. However, its efficiency compared to classical algorithms remains unexplored. In this study, using a statistical technique called count sketch, we propose a classical ML algorithm that uses the same Hilbert space. In numerical simulations, our proposed algorithm demonstrates similar performance to QCL for several ML tasks. This provides a new perspective with which to consider the computational and memory efficiency of quantum ML algorithms.

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Authors (2)
  1. Naoko Koide-Majima (4 papers)
  2. Kei Majima (4 papers)
Citations (2)

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