DEVELOPMENT OF A METHOD FOR CALCULATING THE PROTECTION OF PERSONAL DATA FROM THE CENTRALITY OF THE NETWORK

Author:

Akhramovich Volodymyr1ORCID

Affiliation:

1. State University of Telecommunications

Abstract

A mathematical model has been developed and a study of the model of personal data protection from network clustering coefficient and data transfer intensity in social networks has been carried out. Dependencies of protection of the system from the size of the system (and from the amount of personal data); information security threats from the network clustering factor. A system of linear equations is obtained, which consists of the equation: rate of change of information flow from social network security and coefficients that reflect the impact of security measures, amount of personal data, leakage rate, change of information protection from network clustering factor, its size, personal data protection. As a result of solving the system of differential equations, mathematical and graphical dependences of the indicator of personal data protection in the social network from different components are obtained. Considering three options for solving the equation near the steady state of the system, we can conclude that, based on the conditions of the ratio of dissipation and natural frequency, the attenuation of the latter to a certain value is carried out periodically, with decaying amplitude, or by exponentially decaying law. A more visual analysis of the system behavior is performed, moving from the differential form of equations to the discrete one and modeling some interval of the system existence.Mathematical and graphical dependences of the system natural frequency, oscillation period, attenuation coefficient are presented. Simulation modeling for values with deviation from the stationary position of the system is carried out. As a result of simulation, it is proved that the social network protection system is nonlinear.

Publisher

Borys Grinchenko Kyiv University

Subject

General Medicine

Reference11 articles.

1. Akhramovich, V., Hrebennikov, A., Tsarenko, B., Stefurak, O. (2021). Method of calculating the protection of personal data from the reputation of users. Sciences of Europe, 1(80), 23-31.

2. Akhramovich, V., Hurenko, M. (2020). Еstimation of the indicator of protection of information in means of personal use and a local area network. Сolloquium-journal, 19(116), 36-41.

3. Akhramovych, V. (2019). Model of strong and weak connections of users in social networks. Communication. K. SUT, 3, 8-12.

4. Laptiev, O., Savchenko, V., Kotenko, A., Akhramovych, V., Samosyuk, V., Shuklin, G., Biehun, A. (2021). Method of Determining Trust and Protection of Personal Data in Social Networks. International Journal of Communication Networks and Information Security (IJCNIS), 1, 15-21.

5. Shchypanskyi, P., Savchenko, V., Akhramovych, V., Muzshanova, T., Lehominova, S., Chegrenets, V. (2020). The Model of Secure Social Networks Activity Based on Graph Theory. International Journal of Innovative Technology and Exploring Engineering, 9(4), 1803-1810. https://doi.org/10.35940/ijitee.d1768.029420.

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