Quantum Machine Learning Algorithms for Optimizing Complex Data Classification Tasks
Keywords:
Quantum Computing, Quantum Machine Learning, Variational Quantum Circuits, Quantum SVM, Quantum Neural Networks, Data ClassificationAbstract
Quantum Machine Learning (QML) has emerged as a paradigm that combines the computational advantages of quantum computing with the predictive capabilities of machine learning to address complex data classification problems. As data dimensionality increases rapidly and classical learning algorithms face scalability constraints, QML leverages quantum parallelism, entanglement, and high-dimensional Hilbert space representations to enhance learning performance. This paper reviews and analyses advanced QML algorithms, including Quantum Support Vector Machines (QSVM), Variational Quantum Circuits (VQC), Quantum Neural Networks (QNN), and Quantum Kernel Estimation, for optimizing both binary and multi-class classification tasks under high-complexity conditions. The proposed QML framework is evaluated on benchmark datasets like MNIST, the Breast Cancer Wisconsin (BCW) dataset, and synthetic nonlinear datasets, and is compared against classical machine learning baselines, including Support Vector Machines (SVM), Random Forests (RF), and Deep Neural Networks (DNN). The results demonstrate notable improvements in classification accuracy (up to 96.8%), decision margins, and computational efficiency in quantum-suitable data regimes, while also highlighting current limitations related to noise, circuit depth, and hardware constraints. Overall, the study presents a unified QML framework, theoretical formulations, and experimental evaluations that illustrate the potential of quantum algorithms for next-generation classification tasks.Downloads
Download data is not yet available.
Downloads
Published
2026-01-01
How to Cite
Mandava, R., & Sravanthi, G. L. (2026). Quantum Machine Learning Algorithms for Optimizing Complex Data Classification Tasks . Journal of Transactions in Systems Engineering, 4(1), 538–559. Retrieved from https://journals.tultech.eu/index.php/jtse/article/view/364
Issue
Section
Articles
License
Copyright (c) 2025 Journal of Transactions in Systems Engineering

This work is licensed under a Creative Commons Attribution 4.0 International License.
