Performance Analysis of Quantum Machine Learning ClassifiersDownload PDF

Published: 22 Oct 2021, Last Modified: 05 May 2023NeurIPS 2021 Workshop LatinX in AI PosterReaders: Everyone
Keywords: Quantum Machine Learning, Machine Learning, quantum computing, Classifiers, SVCQK, QSVC, VQC, QNN, Neural networks, performance, algorithms
TL;DR: Classify with quantum classifiers could help your analysis.
Abstract: In recent years, researchers have started looking into data transformations in quantum computation. They want to see how quantum computing affects the robustness and performance of machine learning methods. Quantum mechanics succeed in explaining some phenomena where classical formulas failed in the past. Thus, it expanded in analytical research fields such as Quantum Machine Learning (QML) over the years. The developing QML discipline has proven solutions to issues that are equivalent (or comparable) to those addressed by classical machine learning, including classification and prediction problems using quantum classifiers. As a result of these factors, quantum classifier analysis has become one of the most important topics in QML. This paper studies four quantum classifiers: Support Vector Classification with Quantum Kernel (SVCQK), Quantum Support Vector Classifier (QSVC), Variational Quantum Classifier (VQC), and Circuit Quantum Neural Network Classifier (CQNNC). We also report case study outcomes and results analysis utilizing linearly and non-linearly separable datasets generated. Our research is to explore if quantum information may aid learning or convergence.
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