Skip to Main Content (Press Enter)

Logo UNIMORE
  • ×
  • Home
  • Corsi
  • Insegnamenti
  • Professioni
  • Persone
  • Pubblicazioni
  • Strutture
  • Terza Missione
  • Attività
  • Competenze

UNI-FIND
Logo UNIMORE

|

UNI-FIND

unimore.it
  • ×
  • Home
  • Corsi
  • Insegnamenti
  • Professioni
  • Persone
  • Pubblicazioni
  • Strutture
  • Terza Missione
  • Attività
  • Competenze
  1. Pubblicazioni

Hardening Machine Learning based Network Intrusion Detection Systems with Synthetic NetFlows

Contributo in Atti di convegno
Data di Pubblicazione:
2024
Citazione:
Hardening Machine Learning based Network Intrusion Detection Systems with Synthetic NetFlows / Venturi, A.; Galli, D.; Stabili, D.; Marchetti, M.. - 3731:(2024). ( 8th Italian Conference on Cyber Security, ITASEC 2024 ita 2024).
Abstract:
Modern Network Intrusion Detection Systems (NIDS) involve Machine Learning (ML) algorithms to automate the detection process. Although this integration has significantly enhanced their efficiency, ML models have been found vulnerable to adversarial attacks, which alter the input data to fool the detectors into producing a misclassification. Among the proposed countermeasures, adversarial training appears to be the most promising technique; however, it demands a large number of adversarial samples, which typically have to be manually produced. We overcome this limitation by introducing a novel methodology that employs a Graph AutoEncoder (GAE) to generate synthetic traffic records automatically. By design, the generated samples exhibit alterations in the attributes compared to the original netflows, making them suitable for use as adversarial samples during the adversarial training procedure. By injecting the generated samples into the training set, we obtain hardened detectors with better resilience to adversarial attacks. Our experimental campaign based on a public dataset of real enterprise network traffic also demonstrates that the proposed method even improves the detection rates of the hardened detectors in non-adversarial settings.
Tipologia CRIS:
Relazione in Atti di Convegno
Keywords:
Adversarial Training; Data Augmentation; Graph Neural Network; ML-based NIDS
Elenco autori:
Venturi, A.; Galli, D.; Stabili, D.; Marchetti, M.
Autori di Ateneo:
GALLI DIMITRI
MARCHETTI Mirco
Stabili Dario
Link alla scheda completa:
https://iris.unimore.it/handle/11380/1368468
Link al Full Text:
https://iris.unimore.it//retrieve/handle/11380/1368468/728951/paper16.pdf
Titolo del libro:
CEUR Workshop Proceedings
Pubblicato in:
CEUR WORKSHOP PROCEEDINGS
Journal
CEUR WORKSHOP PROCEEDINGS
Series
  • Utilizzo dei cookie

Realizzato con VIVO | Designed by Cineca | 26.5.0.0