Toll Free Helpline (India): 1800 1234 070

Rest of World: +91-9810852116

Free Publication Certificate

Vol. 8, Special Issue 4 (2019)

Quantum machine learning: A theoretical overview of quantum computing applications

Author(s):
Dr. Yogesh Bhomia, Dr. Sunil Kumar Mishra and Ravi Chudhary
Abstract:
Quantum computing has demonstrated remarkable prowess in addressing factorization issues and unordered search problems, showcasing its quantum parallelism capabilities that enable exponential speed-up for specific computational challenges. However, the seamless integration of classical and quantum computing to harness accelerated computation speed presents unique challenges. This paper delves into the intricacies of this integration, focusing on the current state of quantum machine learning (QML) and evaluating the performance of classical and quantum algorithms in terms of accuracy.
To address these challenges, we conducted experiments utilizing three datasets for binary classification, implementing both classical Support Vector Machine (SVM) and Quantum SVM (QSVM) algorithms. Our investigations reveal that the QSVM algorithm consistently outperforms its classical counterpart on complex datasets. Notably, the performance gap between quantum and classical models widens with increasing dataset complexity, shedding light on the susceptibility of simple classical models to overfitting when confronted with intricate datasets.
Despite the ongoing development required for quantum hardware with ample resources, our findings underscore the significant potential of quantum machine learning, particularly in unsupervised learning and generative models. As we move forward, it is imperative to channel more efforts into exploring novel quantum learning models capable of harnessing the inherent power of quantum mechanics to overcome the constraints of classical machine learning. This research contributes to the ongoing discourse on the future of quantum computing, emphasizing the need for continued exploration and innovation in quantum machine learning methodologies.
Pages: 09-12  |  233 Views  132 Downloads
How to cite this article:
Dr. Yogesh Bhomia, Dr. Sunil Kumar Mishra and Ravi Chudhary. Quantum machine learning: A theoretical overview of quantum computing applications. The Pharma Innovation Journal. 2019; 8(4S): 09-12. DOI: 10.22271/tpi.2019.v8.i4Sa.25257

Call for book chapter