Evaluating the Impact of Different Quantum Kernels on the Classification Performance of Support Vector Machine Algorithm: A Medical Dataset Application
Emine Akpinar, Sardar M. N. Islam, Murat Oduncuoglu

TL;DR
This study evaluates how different quantum feature maps affect the performance of quantum SVM classifiers on medical datasets, highlighting the importance of feature mapping choices for classification accuracy and efficiency.
Contribution
It demonstrates the significant impact of feature mapping techniques on QSVM classification results and provides guidance for improving quantum machine learning performance.
Findings
Rx and Ry gates yielded best classification accuracy.
Quantum feature maps significantly influence classification performance.
Optimal feature maps reduced total execution time.
Abstract
The support vector machine algorithm with a quantum kernel estimator (QSVM-Kernel), as a leading example of a quantum machine learning technique, has undergone significant advancements. Nevertheless, its integration with classical data presents unique challenges. While quantum computers primarily interact with data in quantum states, embedding classical data into quantum states using feature mapping techniques is essential for leveraging quantum algorithms Despite the recognized importance of feature mapping, its specific impact on data classification outcomes remains largely unexplored. This study addresses this gap by comprehensively assessing the effects of various feature mapping methods on classification results, taking medical data analysis as a case study. In this study, the QSVM-Kernel method was applied to classification problems in two different and publicly available medical…
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Taxonomy
TopicsArtificial Intelligence in Healthcare
