Quantum Machine Learning Techniques for Network Defense: Comparative Study of Quantum vs. Classical Approaches

Authors

  • Rosemary J Assistant Professor, Kristu Jyoti College of Management and Technology, Changanacherry, Kerala, India. Author
  • Adrishya Maria Abraham Assistant Professor, Kristu Jyoti College of Management and Technology, Changanacherry, Kerala, India. Author

DOI:

https://doi.org/10.47392/IRJAEM.2024.0564

Keywords:

Classical Machine Learning, Network Defense, Quantum Machine Learning

Abstract

With the potential for quantum computing to completely transform cybersecurity, quantum machine learning is becoming a ground-breaking technology. Cyber-attacks have been successfully countered by traditional network defense systems, which mostly use conventional machine learning (ML) techniques. However, the growing complexity of assaults and the exponential expansion of network data reveal the shortcomings of traditional methods, especially with regard to speed and scalability. By utilizing quantum algorithms like Quantum Support Vector Machines (QSVM), Quantum Neural Networks (QNN), and Variational Quantum Circuits (VQC), Quantum Machine Learning (QML) presents a viable substitute. These methods are especially well-suited for real-time network defense scenarios since they show the capacity to handle high-dimensional data, identify complex patterns, and increase computational efficiency. In this research, the effectiveness of QML techniques in network defense is thoroughly examined and contrasted with that of traditional machine learning techniques. The study emphasizes how QML may surpass conventional models in terms of accuracy, scalability, and resilience against sophisticated threats by concentrating on use cases like intrusion detection, malware analysis, and anomaly detection. The necessity for hybrid quantum-classical models and the present constraints of quantum hardware are among the difficulties that are discussed in the study. This study highlights the revolutionary potential of QML in strengthening network defense mechanisms and identifies crucial areas for further research, paving the road for a secure digital future by combining theoretical ideas with experimental discoveries.

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Published

2024-12-19