Visible to the public Biblio

Filters: Author is Kotenko, Igor  [Clear All Filters]
2022-03-02
Kotenko, Igor, Saenko, Igor, Lauta, Oleg, Karpov, Mikhail.  2021.  Situational Control of a Computer Network Security System in Conditions of Cyber Attacks. 2021 14th International Conference on Security of Information and Networks (SIN). 1:1–8.
Modern cyberattacks are the most powerful disturbance factor for computer networks, as they have a complex and devastating impact. The impact of cyberattacks is primarily aimed at disrupting the performance of computer network protection means. Therefore, managing this defense system in the face of cyberattacks is an important task. The paper examines a technique for constructing an effective control system for a computer network security system operating in real time in the context of cyber attacks. It is supposed that it is built on the basis of constructing a system state space and a stack of control decisions. The probability of finding the security system in certain state at each control step is calculated using a finite Markov chain. The technique makes it possible to predict the number of iterations for managing the security system when exposed to cyber attacks, depending on the segment of the space of its states and the selected number of transitions, as well as automatically generate control decisions. An algorithm has been developed for situational control of a computer network security system in conditions of cyber attacks. The experimental results obtained using the generated dataset demonstrated the high efficiency of the developed technique and the ability to use it to determine the parameters that are most susceptible to abnormal deviations during the impact of cyber attacks.
2020-08-28
Kolomeets, Maxim, Chechulin, Andrey, Zhernova, Ksenia, Kotenko, Igor, Gaifulina, Diana.  2020.  Augmented reality for visualizing security data for cybernetic and cyberphysical systems. 2020 28th Euromicro International Conference on Parallel, Distributed and Network-Based Processing (PDP). :421—428.
The paper discusses the use of virtual (VR) and augmented (AR) reality for visual analytics in information security. Paper answers two questions: “In which areas of information security visualization VR/AR can be useful?” and “What is the difference of the VR/AR from similar methods of visualization at the level of perception of information?”. The first answer is based on the investigation of information security areas and visualization models that can be used in VR/AR security visualization. The second answer is based on experiments that evaluate perception of visual components in VR.
2019-08-26
Doynikova, Elena, Fedorchenko, Andrey, Kotenko, Igor.  2018.  Determination of Security Threat Classes on the Basis of Vulnerability Analysis for Automated Countermeasure Selection. Proceedings of the 13th International Conference on Availability, Reliability and Security. :62:1–62:8.
Currently the task of automated security monitoring and responding to security incidents is highly relevant. The authors propose an approach to determine weaknesses of the analyzed system on the basis of its known vulnerabilities for further specification of security threats. It is relevant for the stage of determining the necessary and sufficient set of security countermeasures for specific information systems. The required set of security response tools and means depends on the determined threats. The possibility of practical implementation of the approach follows from the connectivity between open databases of vulnerabilities, weaknesses, and attacks. The authors applied various classification methods for vulnerabilities considering values of their properties. The paper describes source data used for classification, their preprocessing stage, and the classification results. The obtained results and the methods for their enhancement are discussed.
2019-05-01
Kotenko, Igor, Ageev, Sergey, Saenko, Igor.  2018.  Implementation of Intelligent Agents for Network Traffic and Security Risk Analysis in Cyber-Physical Systems. Proceedings of the 11th International Conference on Security of Information and Networks. :22:1-22:4.

The paper offers an approach for implementation of intelligent agents intended for network traffic and security risk analysis in cyber-physical systems. The agents are based on the algorithm of pseudo-gradient adaptive anomaly detection and fuzzy logical inference. The suggested algorithm operates in real time. The fuzzy logical inference is used for regulation of algorithm parameters. The variants of the implementation are proposed. The experimental assessment of the approach confirms its high speed and adequate accuracy for network traffic analysis.