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A Quantum Circuit Learning-based Investigation: A Case Study in Iris Benchmark Dataset Binary Classification

Akrom, Muhamad and Herowati, Wise and Setiadi, De Rosal Ignatius Moses (2025) A Quantum Circuit Learning-based Investigation: A Case Study in Iris Benchmark Dataset Binary Classification. Journal of Computing Theories and Applications, 2 (3). pp. 355-367. ISSN 3024-9104

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Abstract

This study presents a Quantum Machine Learning (QML) architecture for perfectly classifying the Iris flower dataset. The research addresses improving classification accuracy using quantum models in machine-learning tasks. The objective is to demonstrate the effectiveness of QML approaches, specifically the Variational Quantum Circuit (VQC), Quantum Neural Network (QNN), and Quantum Support Vector Machine (QSVM), in achieving high performance on the Iris dataset. The proposed methods result in perfect classification, with all models attaining accuracy, precision, recall, and an F1-score of 1.00. The main finding is that the QML architecture successfully achieves flawless classification, contributing significantly to the field. These results underscore the potential of QML in solving complex classification problems and highlight its promise for future applications across various domains. The study concludes that QML techniques can offer transformative solutions in machine learning tasks, particularly those leveraging VQC, QNN, and QSVM.

Item Type: Article
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Depositing User: dl fts
Date Deposited: 05 Jan 2025 12:37
Last Modified: 05 Jan 2025 12:37
URI: https://dl.futuretechsci.org/id/eprint/98

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