2024
DOI: 10.3390/sym16091220
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A Study on Network Anomaly Detection Using Fast Persistent Contrastive Divergence

Jaeyeong Jeong,
Seongmin Park,
Joonhyung Lim
et al.

Abstract: As network technology evolves, cyberattacks are not only increasing in frequency but also becoming more sophisticated. To proactively detect and prevent these cyberattacks, researchers are developing intrusion detection systems (IDSs) leveraging machine learning and deep learning techniques. However, a significant challenge with these advanced models is the increased training time as model complexity grows, and the symmetry between performance and training time must be taken into account. To address this issue… Show more

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