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On the Capabilities of Quantum Machine Learning

88 Citations2022
Sarah Alghamdi, Sultan Almuhammadi
2022 7th International Conference on Data Science and Machine Learning Applications (CDMA)

Empirical results show that quantum neural networks can be trained efficiently and are implemented using Qiskit as a proof of concept and tested on a real quantum computer.

Abstract

Machine learning techniques give impressive results in many areas. However, due to the physical limitation of integrated circuits which restricts their computational power growth, and the rapid advances in quantum computing, lots of research studies on quantum machine learning (QML) have been done recently. QML is a technique that uses quantum algorithms as parts of the implementation. Quantum algorithms use quantum mechanics and have the potential to outperform classical algorithms for a given problem. In this paper, three widely used machine learning algorithms are discussed and their quantum versions are presented, namely: quantum neural network, quantum autoencoder, and quantum kernel method. In addition, we discuss the potential capabilities of these QML algorithms and review recent work employing them. Moreover, a quantum neural network prototype is implemented using Qiskit as a proof of concept and tested on a real quantum computer. Empirical results show that quantum neural networks can be trained efficiently.