QUANT-PHETLGFeb 22, 2024

A Quick Introduction to Quantum Machine Learning for Non-Practitioners

arXiv:2402.14694v14 citationsh-index: 3
Originality Synthesis-oriented
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It provides an introductory overview for researchers new to quantum mechanics and machine learning, but it is incremental as it reviews existing concepts without presenting new results.

This paper introduces quantum machine learning, exploring how quantum computing principles might improve classical machine learning by reducing network size and training time, with an example problem demonstrating potential advantages.

This paper provides an introduction to quantum machine learning, exploring the potential benefits of using quantum computing principles and algorithms that may improve upon classical machine learning approaches. Quantum computing utilizes particles governed by quantum mechanics for computational purposes, leveraging properties like superposition and entanglement for information representation and manipulation. Quantum machine learning applies these principles to enhance classical machine learning models, potentially reducing network size and training time on quantum hardware. The paper covers basic quantum mechanics principles, including superposition, phase space, and entanglement, and introduces the concept of quantum gates that exploit these properties. It also reviews classical deep learning concepts, such as artificial neural networks, gradient descent, and backpropagation, before delving into trainable quantum circuits as neural networks. An example problem demonstrates the potential advantages of quantum neural networks, and the appendices provide detailed derivations. The paper aims to help researchers new to quantum mechanics and machine learning develop their expertise more efficiently.

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