Labelled Network Capture Generation for Anomaly Detection
Nogues, Maël; Brosset, David; Hanan Hindy; Bellekens, Xavier; Kermarrec, Yvon;
Abstract
In the race to simplify man-machine interactions and maintenance processes, hardware is increasingly interconnected. With more connected devices than ever, in our homes and workplaces, the attack surface is increasing tremendously. To detect this growing flow of cyber-attacks, machine learning based intrusion detection systems are being deployed at an unprecedented pace. In turn, these require a constant feed of data to learn and differentiate normal traffic from abnormal traffic. Unfortunately, there is a lack of learning datasets available. In this paper, we present a software platform generating fully labelled datasets for data analysis and anomaly detection.
Other data
| Title | Labelled Network Capture Generation for Anomaly Detection | Authors | Nogues, Maël; Brosset, David; Hanan Hindy ; Bellekens, Xavier; Kermarrec, Yvon | Keywords | Cyber security;Data analysis;Intrusion detection systems;Network security;Network traffic generation | Issue Date | 1-Jan-2020 | Conference | Lecture Notes in Computer Science Including Subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics | ISBN | [9783030453701] | ISSN | 03029743 | DOI | 10.1007/978-3-030-45371-8_7 | Scopus ID | 2-s2.0-85084005576 |
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