Utilize este identificador para referenciar este registo: http://hdl.handle.net/10400.22/21851
Título: Adaptative Perturbation Patterns: Realistic Adversarial Learning for Robust Intrusion Detection
Autor: Vitorino, João
Oliveira, Nuno
Praça, Isabel
Palavras-chave: Realistic adversarial examples
Adversarial attacks
Adversarial robustness
Machine learning
Tabular data
Intrusion detection
Data: 8-Mar-2022
Editora: MDPI
Resumo: Adversarial attacks pose a major threat to machine learning and to the systems that rely on it. In the cybersecurity domain, adversarial cyber-attack examples capable of evading detection are especially concerning. Nonetheless, an example generated for a domain with tabular data must be realistic within that domain. This work establishes the fundamental constraint levels required to achieve realism and introduces the Adaptative Perturbation Pattern Method (A2PM) to fulfill these constraints in a gray-box setting. A2PM relies on pattern sequences that are independently adapted to the characteristics of each class to create valid and coherent data perturbations. The proposed method was evaluated in a cybersecurity case study with two scenarios: Enterprise and Internet of Things (IoT) networks. Multilayer Perceptron (MLP) and Random Forest (RF) classifiers were created with regular and adversarial training, using the CIC-IDS2017 and IoT-23 datasets. In each scenario, targeted and untargeted attacks were performed against the classifiers, and the generated examples were compared with the original network traffic flows to assess their realism. The obtained results demonstrate that A2PM provides a scalable generation of realistic adversarial examples, which can be advantageous for both adversarial training and attacks.
Peer review: yes
URI: http://hdl.handle.net/10400.22/21851
DOI: 10.3390/fi14040108
Versão do Editor: https://www.mdpi.com/1999-5903/14/4/108
Aparece nas colecções:ISEP – GECAD – Artigos

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