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An Evaluation of Hardware-Efficient Quantum Neural Networks for Image Data Classification

Tuyen Nguyen, Incheon Paik, Yutaka Watanobe, Truong Cong Thang

2022Electronics26 citationsDOIOpen Access PDF

Abstract

Quantum computing is expected to fundamentally change computer systems in the future. Recently, a new research topic of quantum computing is the hybrid quantum–classical approach for machine learning, in which a parameterized quantum circuit, also called quantum neural network (QNN), is optimized by a classical computer. This hybrid approach can have the benefits of both quantum computing and classical machine learning methods. In this early stage, it is of crucial importance to understand the new characteristics of quantum neural networks for different machine learning tasks. In this paper, we will study quantum neural networks for the task of classifying images, which are high-dimensional spatial data. In contrast to previous evaluations of low-dimensional or scalar data, we will investigate the impacts of practical encoding types, circuit depth, bias term, and readout on classification performance on the popular MNIST image dataset. Various interesting findings on learning behaviors of different QNNs are obtained through experimental results. To the best of our knowledge, this is the first work that considers various QNN aspects for image data.

Topics & Concepts

MNIST databaseComputer scienceQuantum machine learningQuantum computerArtificial neural networkQuantumArtificial intelligenceParameterized complexityDeep learningMachine learningComputer engineeringTheoretical computer scienceAlgorithmPhysicsQuantum mechanicsQuantum Computing Algorithms and ArchitectureAdvanced Memory and Neural ComputingAdvancements in Semiconductor Devices and Circuit Design
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