학술논문

Quantum-Assisted Activation for Supervised Learning in Healthcare-Based Intrusion Detection Systems
Document Type
Periodical
Source
IEEE Transactions on Artificial Intelligence IEEE Trans. Artif. Intell. Artificial Intelligence, IEEE Transactions on. 5(3):977-984 Mar, 2024
Subject
Computing and Processing
Quantum computing
Biological neural networks
Computer security
Computer architecture
Neurons
Task analysis
Intrusion detection
Activation function
intrusion detection
quantum machine learning
supervised learning
Language
ISSN
2691-4581
Abstract
Intrusion detection systems (IDSs) are amongst the most important automated defense mechanisms in modern industry. It is guarding against many attack vectors, especially in healthcare, where sensitive information (patient’s medical history, prescriptions, electronic health records, medical bills/debts, and many other sensitive data points) is open to compromise from adversaries. In the big data era, classical machine learning has been applied to train IDS. However, classical IDS tend to be complex: either using several hidden layers susceptible to overfitting on training data or using overly complex architectures such as convolutional neural networks, long-short term memory systems, and recurrent neural networks. This article explored the combination of principles of quantum mechanics and neural networks to train IDS. A hybrid classical-quantum neural architecture is proposed with a quantum-assisted activation function that successfully captures patterns in the dataset while having less architectural memory footprint than classical solutions. The experimental results are demonstrated on the popular KDD99 dataset while comparing our solution to other classical models.