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dc.creatorKonstantinos Demertzisen
dc.creatorPanayiotis Kikirasen
dc.creatorNikos Tziritasen
dc.creatorSalvador Llopis Sanchezen
dc.creatorLazaros Iliadisen
dc.date.accessioned2022-11-03T16:27:40Z
dc.date.available2022-11-03T16:27:40Z
dc.date.issued2018
dc.identifier10.3390/bdcc2040035
dc.identifier.issn2504-2289
dc.identifier.urihttp://hdl.handle.net/11615/60211
dc.description.abstractA Security Operations Center (SOC) can be defined as an organized and highly skilled team that uses advanced computer forensics tools to prevent, detect and respond to cybersecurity incidents of an organization. The fundamental aspects of an effective SOC is related to the ability to examine and analyze the vast number of data flows and to correlate several other types of events from a cybersecurity perception. The supervision and categorization of network flow is an essential process not only for the scheduling, management, and regulation of the network’s services, but also for attacks identification and for the consequent forensics’ investigations. A serious potential disadvantage of the traditional software solutions used today for computer network monitoring, and specifically for the instances of effective categorization of the encrypted or obfuscated network flow, which enforces the rebuilding of messages packets in sophisticated underlying protocols, is the requirements of computational resources. In addition, an additional significant inability of these software packages is they create high false positive rates because they are deprived of accurate predicting mechanisms. For all the reasons above, in most cases, the traditional software fails completely to recognize unidentified vulnerabilities and zero-day exploitations. This paper proposes a novel intelligence driven Network Flow Forensics Framework (NF3) which uses low utilization of computing power and resources, for the Next Generation Cognitive Computing SOC (NGC2SOC) that rely solely on advanced fully automated intelligence methods. It is an effective and accurate Ensemble Machine Learning forensics tool to Network Traffic Analysis, Demystification of Malware Traffic and Encrypted Traffic Identification.en
dc.sourceBig Data and Cognitive Computingen
dc.subjectnetwork flow forensicsen
dc.subjectSecurity Operations Centeren
dc.subjectnetwork traffic analysisen
dc.subjecttraffic identificationen
dc.subjectdemystification of malware trafficen
dc.subjectensemble machine learningen
dc.titleThe Next Generation Cognitive Security Operations Center: Network Flow Forensics Using Cybersecurity Intelligence.en
dc.typejournalArticleen
dc.identifier.bibliographicCitationDemertzis, K.; Kikiras, P.; Tziritas, N.; Sanchez, S.L.; Iliadis, L. The Next Generation Cognitive Security Operations Center: Network Flow Forensics Using Cybersecurity Intelligence. Big Data Cogn. Comput. 2018, 2, 35. https://doi.org/10.3390/bdcc2040035.en


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