Abstract
As the digital landscape becomes increasingly complex, traditional
cybersecurity measures are struggling to keep pace with the growing
sophistication of cyber threats. This escalating challenge calls for
new, more robust solutions. In this context, Quantum Computing emerges
as a powerful tool that can change our approach to network security. Our
research addresses this by introducing QuantumNetSec, a novel Intrusion
Detection System (IDS) that combines quantum and classical computing
techniques. QuantumNetSec employs Quantum Machine Learning (QML)
personalized methodologies to analyze network patterns and detect
malicious activities. Through detailed experimentation with publicly
shared datasets, QuantumNetSec demonstrated superior performance in both
binary and multiclass classification tasks. Our findings highlight the
significant potential of quantum-enhanced cybersecurity solutions,
showcasing QuantumNetSec’s ability to accurately detect a wide range of
cyber threats, paving the way for more resilient and effective intrusion
detection systems in the age of quantum utility.