In the evolving cybersecurity landscape, the rising frequency of Distributed Denial of Service (DDoS) attacks requires robust defense mechanisms to safeguard network infrastructure availability and integrity. Deep Learning (DL) models have emerged as a promising approach for DDoS attack detection and mitigation due to their capability of automatically learning feature representations and distinguishing complex patterns within network traffic data. However, the effectiveness of DL models in protecting against evolving attacks depends also on the design of adaptive architectures, through the combination of appropriate models, quality data, and thorough hyperparameter optimizations, which are scarcely performed in the literature. Also, within adaptive architectures for DDoS detection, no method has yet addressed how to transfer knowledge between different datasets to improve classification accuracy. In this paper, we propose an innovative approach for DDoS detection by leveraging Convolutional Neural Networks (CNN), adaptive architectures, and transfer learning techniques. Experimental results on publicly available datasets show that the proposed adaptive transfer learning method effectively identifies benign and malicious activities and specific attack categories.

Robust DDoS attack detection with adaptive transfer learning / M.B. Anley, A. Genovese, D. Agostinello, V. Piuri. - In: COMPUTERS & SECURITY. - ISSN 0167-4048. - (2024), pp. 103962.1-103962.12. [Epub ahead of print] [10.1016/j.cose.2024.103962]

Robust DDoS attack detection with adaptive transfer learning

M.B. Anley
Primo
;
A. Genovese
Secondo
;
V. Piuri
Ultimo
2024

Abstract

In the evolving cybersecurity landscape, the rising frequency of Distributed Denial of Service (DDoS) attacks requires robust defense mechanisms to safeguard network infrastructure availability and integrity. Deep Learning (DL) models have emerged as a promising approach for DDoS attack detection and mitigation due to their capability of automatically learning feature representations and distinguishing complex patterns within network traffic data. However, the effectiveness of DL models in protecting against evolving attacks depends also on the design of adaptive architectures, through the combination of appropriate models, quality data, and thorough hyperparameter optimizations, which are scarcely performed in the literature. Also, within adaptive architectures for DDoS detection, no method has yet addressed how to transfer knowledge between different datasets to improve classification accuracy. In this paper, we propose an innovative approach for DDoS detection by leveraging Convolutional Neural Networks (CNN), adaptive architectures, and transfer learning techniques. Experimental results on publicly available datasets show that the proposed adaptive transfer learning method effectively identifies benign and malicious activities and specific attack categories.
No
English
DDoS; Cyber security; Deep learning; Transfer learning
Settore INF/01 - Informatica
Settore ING-INF/05 - Sistemi di Elaborazione delle Informazioni
Articolo
Esperti anonimi
Pubblicazione scientifica
   Edge AI Technologies for Optimised Performance Embedded Processing (EdgeAI)
   EdgeAI
   MINISTERO DELLO SVILUPPO ECONOMICO
   101097300

   Green responsibLe privACy preservIng dAta operaTIONs
   GLACIATION
   EUROPEAN COMMISSION

   SEcurity and RIghts in the CyberSpace (SERICS)
   SERICS
   MINISTERO DELL'UNIVERSITA' E DELLA RICERCA
   codice identificativo PE00000014
2024
22-giu-2024
Elsevier
103962
1
12
12
Epub ahead of print
Periodico con rilevanza internazionale
crossref
Aderisco
info:eu-repo/semantics/article
Robust DDoS attack detection with adaptive transfer learning / M.B. Anley, A. Genovese, D. Agostinello, V. Piuri. - In: COMPUTERS & SECURITY. - ISSN 0167-4048. - (2024), pp. 103962.1-103962.12. [Epub ahead of print] [10.1016/j.cose.2024.103962]
open
Prodotti della ricerca::01 - Articolo su periodico
4
262
Article (author)
Periodico con Impact Factor
M.B. Anley, A. Genovese, D. Agostinello, V. Piuri
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1065639
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