仕訳帳情報
Computers & Security
http://www.journals.elsevier.com/computers-and-security/
インパクト ・ ファクター:
4.800
出版社:
Elsevier
ISSN:
0167-4048
閲覧:
34924
追跡:
115
論文募集
The International Source of Innovation for the Information Security and IT Audit Professional

Computers & Security is one of the most respected journals in IT security, being recognized worldwide as THE primary source of reference for IT security research and applications expertise.

Computers & Security provides the IT security community with a unique blend of leading edge research and sound practical management advice. It is aimed at the professional involved with computer security, audit, control and data integrity in all sectors - industry, commerce and academia - helping the community build and operate fully secure systems and organisations.

With its high-profile editorial board and informative regular features and columns, the journal is essential reading for IT security professionals around the world.

    Our cutting edge research will help you secure and maintain your systems
    We accept only the highest quality of papers ensuring that you receive the relevant and practical advice you need
    We don't only highlight the threats, we give you the solutions
最終更新 Dou Sun 2024-07-14
Special Issues
Special Issue on Advances in Robust Intrusion Detection through Machine Learning
提出日: 2024-12-20

Intrusion detection systems are a key component in the fight against cyber attacks. Robustness by design – the ability to identify intrusions even when evasion techniques are employed – should be a core characteristic of any intrusion detection technique. Guest editors: Mauro Conti Full Professor University of Padua, Padua, Italy conti-journal@math.unipd.it Fabio De Gaspari Assistant Professor Sapienza University of Rome, Rome, Italy degaspari@di.uniroma1.it Jianying Zhou Full Professor Singapore University of Technology and Design, Singapore jianying_zhou@sutd.edu.sg Special issue information: Intrusion detection systems are a key component in the fight against cyber attacks. Robustness by design – the ability to identify intrusions even when evasion techniques are employed – should be a core characteristic of any intrusion detection technique. Intrusion detection approaches, however, are often proposed and validated only against existing attacks, without considering how evolving adversaries might adapt to evade the proposed defenses. The growing adoption of machine learning and deep learning models for cyber attack detection has further exacerbated this issue. These models are often used as black-box oracles for intrusion detection, with no in-depth analysis on how detection decisions are made, or considerations for their vulnerability evasion. The ability of cybersecurity solutions to withstand evasion and data manipulation plays a crucial role in the security of computer systems, and novel research efforts in intrusion detection should focus on robust-by-design approaches. This special issue provides an opportunity to present advances in all areas of machine learning-based intrusion detection, such as behavioral detection, static detection, and provenance-based detection, as well as novel evasion techniques and countermeasures, with a strong emphasis on empirical and theoretical analysis of resilience to evasion and manipulation attacks. Manuscript submission information: Manuscript Submission Deadline *: 20/12/2024 Manuscripts should be submitted using the online submission system of the journal at https://www.editorialmanager.com/cose/default.aspx Authors should select article type 'VSI: Robust ML IDS' during the submission. The author guidance could be found at Guide for authors - Computers & Security - ISSN 0167-4048 | ScienceDirect.com by Elsevier Keywords: Intrusion detection, machine learning, robustness
最終更新 Dou Sun 2024-07-14
関連仕訳帳
CCF完全な名前インパクト ・ ファクター出版社ISSN
International Journal of Health Geographics3.000Springer1476-072X
cArtificial Intelligence in Medicine6.100Elsevier0933-3657
cComputer Speech and Language3.100Elsevier0885-2308
cConnection Science3.200Taylor & Francis0954-0091
cNeurocomputing5.500Elsevier0925-2312
bIEEE Transactions on VLSI Systems2.800IEEE1063-8210
bBioinformatics4.400Oxford University Press1367-4803
IEEE Robotics & Automation Magazine5.400IEEE1070-9932
cKnowledge-Based Systems7.200Elsevier0950-7051
Games and Culture2.400SAGE1555-4120
完全な名前インパクト ・ ファクター出版社
International Journal of Health Geographics3.000Springer
Artificial Intelligence in Medicine6.100Elsevier
Computer Speech and Language3.100Elsevier
Connection Science3.200Taylor & Francis
Neurocomputing5.500Elsevier
IEEE Transactions on VLSI Systems2.800IEEE
Bioinformatics4.400Oxford University Press
IEEE Robotics & Automation Magazine5.400IEEE
Knowledge-Based Systems7.200Elsevier
Games and Culture2.400SAGE
関連会議
CCFCOREQUALIS省略名完全な名前提出日通知日会議日
aa*a1EurocryptInternational Conference on the Theory and Applications of Cryptographic Techniques2024-10-022025-01-312025-05-04
ccPCMPacific-Rim Conference on Multimedia2017-05-232017-07-012017-09-28
cREFSQRequirements Engineering: Foundation for Software Quality2024-11-012025-01-132025-04-07
aa*a1NDSSAnnual Network & Distributed System Security Symposium2024-07-102024-09-192025-02-23
NLPIInternational Conference on NLP & Information Retrieval2023-09-022023-09-112023-09-23
ICPSIEEE International Conference on Industrial Cyber-Physical Systems2020-01-202020-03-312020-06-09
CMSPInternational Conference on Multimedia and Signal Processing2013-05-152013-05-202013-09-20
AmIEuropean Conference on Ambient Intelligence2019-07-192019-08-122019-11-13
AISOInternational Conference on Artificial Intelligence and Soft Computing2022-10-082022-10-152022-10-22
cb4LATINCOMIEEE Latin-American Conference on Communications2024-08-052024-09-062024-11-06
おすすめ