Development of a method for calculation of information protection from the clustering coefficient and information flow in social networks

Authors

DOI:

https://doi.org/10.15587/2706-5448.2022.255962

Keywords:

dynamic models, information protection system, exception method, homogeneous characteristic equation, system stability

Abstract

The object of research is the system of information protection of the social network. The article investigates the dynamic models of the information protection system in social networks taking into account the clustering coefficient, and also analyzes the stability of the protection system. In graph theory, the clustering factor is a measure of the degree to which nodes in a graph tend to group together. The available data suggest that in most real networks, and in particular in social networks, nodes tend to form closely related groups with a relatively high density of connections. It is probability is greater than the average probability of a random connection between two nodes. There are two variants of this term: global and local. The global version was created for a general idea of network clustering, while the local one describes the nesting of individual nodes. There is a practical interest in studying the behavior of the system of protection of social networks from the value of the clustering factor.

Dynamic systems of information protection in social networks in the mathematical sense of this term are considered. A dynamic system is understood as any object or process for which the concept of state as a set of some quantities at a given moment of time is unambiguously defined and a given law is described that describes the change (evolution) of the initial state over time. This law allows the initial state to predict the future state of a dynamic system. It is called the law of evolution.

The study is based on the nonlinearity of the social network protection system. To solve the system of nonlinear equations used: the method of exceptions, the joint solution of the corresponding homogeneous characteristic equation. Since the differential of the protection function has a positive value in some data domains (the requirement of Lyapunov's theorem for this domain is not fulfilled), an additional study of the stability of the protection system within the operating parameters is required. Phase portraits of the data protection system in MatLab/Multisim are determined, which indicate the stability of the protection system in the operating range of parameters even at the maximum value of influences.

Author Biography

Volodymyr Akhramovych, State University of Telecommunications

Doctor of Technical Sciences, Professor

Department of Information and Cyber Defense Systems

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Published

2022-04-30

How to Cite

Akhramovych, V. (2022). Development of a method for calculation of information protection from the clustering coefficient and information flow in social networks. Technology Audit and Production Reserves, 2(2(64), 31–37. https://doi.org/10.15587/2706-5448.2022.255962

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Section

Systems and Control Processes: Reports on Research Projects