Go to:
Logótipo
Você está em: Start > Publications > View > Adversarial Machine Learning Applied to Intrusion and Malware Scenarios: A Systematic Review
Map of Premises
Principal
Publication

Adversarial Machine Learning Applied to Intrusion and Malware Scenarios: A Systematic Review

Title
Adversarial Machine Learning Applied to Intrusion and Malware Scenarios: A Systematic Review
Type
Article in International Scientific Journal
Year
2020-02-18
Authors
Nuno Martins
(Author)
Other
View Personal Page You do not have permissions to view the institutional email. Search for Participant Publications Without AUTHENTICUS Without ORCID
José Magalhães Cruz
(Author)
FEUP
View Personal Page You do not have permissions to view the institutional email. Search for Participant Publications View Authenticus page Without ORCID
Tiago Cruz
(Author)
Other
The person does not belong to the institution. The person does not belong to the institution. The person does not belong to the institution. Without AUTHENTICUS Without ORCID
Pedro Henriques Abreu
(Author)
Other
The person does not belong to the institution. The person does not belong to the institution. The person does not belong to the institution. Without AUTHENTICUS Without ORCID
Journal
Title: IEEE AccessImported from Authenticus Search for Journal Publications
Vol. 8
Pages: 35403-35419
ISSN: 2169-3536
Publisher: IEEE
Other information
Resumo (PT):
Abstract (EN): Cyber-security is the practice of protecting computing systems and networks from digital attacks, which are a rising concern in the Information Age. With the growing pace at which new attacks are developed, conventional signature based attack detection methods are often not enough, and machine learning poses as a potential solution. Adversarial machine learning is a research area that examines both the generation and detection of adversarial examples, which are inputs specially crafted to deceive classifiers, and has been extensively studied specifically in the area of image recognition, where minor modifications are performed on images that cause a classifier to produce incorrect predictions. However, in other fields, such as intrusion and malware detection, the exploration of such methods is still growing. The aim of this survey is to explore works that apply adversarial machine learning concepts to intrusion and malware detection scenarios. We concluded that a wide variety of attacks were tested and proven effective in malware and intrusion detection, although their practicality was not tested in intrusion scenarios. Adversarial defenses were substantially less explored, although their effectiveness was also proven at resisting adversarial attacks. We also concluded that, contrarily to malware scenarios, the variety of datasets in intrusion scenarios is still very small, with the most used dataset being greatly outdated.
Language: English
Type (Professor's evaluation): Scientific
No. of pages: 17
Related Publications

Of the same authors

Analyzing the Footprint of Classifiers in Adversarial Denial of Service Contexts (2019)
Article in International Conference Proceedings Book
Nuno Martins; José Magalhães Cruz; Pedro Henriques Abreu; Tiago Cruz

Of the same journal

Understanding Business Models for the Adoption of Electric Vehicles and Charging Stations: Challenges and Opportunities in Brazil (2023)
Another Publication in an International Scientific Journal
Bitencourt, L; Dias, B; Soares, T; Borba, B; Quirós Tortós, J; Costa, V
Space Imaging Point Source Detection and Characterization (2024)
Another Publication in an International Scientific Journal
Ribeiro, FSF; P. J. V. Garcia; Silva, M; Jaime S Cardoso
Key Indicators to Assess the Performance of LiDAR-Based Perception Algorithms: A Literature Review (2023)
Another Publication in an International Scientific Journal
José Machado da Silva; K. Chiranjeevi; Correia, M. V.
IEEE ACCESS SPECIAL SECTION EDITORIAL: SOFT COMPUTING TECHNIQUES FOR IMAGE ANALYSIS IN THE MEDICAL INDUSTRY - CURRENT TRENDS, CHALLENGES AND SOLUTIONS (2018)
Another Publication in an International Scientific Journal
D. Jude Hemanth; Lipo Wang; João Manuel R. S. Tavares; Fuqian Shi; Vania Vieira Estrela
Generating Synthetic Missing Data: A Review by Missing Mechanism (2019)
Another Publication in an International Scientific Journal
Santos, MS; Pereira, RC; Costa, AF; Soares, JP; Santos, J; Pedro Henriques Abreu

See all (109)

Recommend this page Top
Copyright 1996-2025 © Faculdade de Medicina Dentária da Universidade do Porto  I Terms and Conditions  I Acessibility  I Index A-Z
Page created on: 2025-08-28 at 03:20:03 | Privacy Policy | Personal Data Protection Policy | Whistleblowing | Electronic Yellow Book