MODELING THE PROTECTION OF PERSONAL DATA FROM TRUST AND THE AMOUNT OF INFORMATION ON SOCIAL NETWORKS

The article analyzes the parameters of social networks. The analysis is performed to identify critical threats. Threats may lead to leakage or damage to personal data. The complexity of this issue lies in the ever-increasing volume of data. Analysts note that the main causes of incidents in Internet...

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Main Authors: Serhii Yevseiev, Oleksandr Laptiev, Sergii Lazarenko, Anna Korchenko, Iryna Manzhul
Format: Article
Language:English
Published: Scientific Route OÜ 2021-01-01
Series:EUREKA: Physics and Engineering
Subjects:
Online Access:http://journal.eu-jr.eu/engineering/article/view/1615
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spelling doaj-121e0d8fff214b68aa3c6d32add9fd1e2021-02-04T15:42:30ZengScientific Route OÜEUREKA: Physics and Engineering2461-42542461-42622021-01-01124311615MODELING THE PROTECTION OF PERSONAL DATA FROM TRUST AND THE AMOUNT OF INFORMATION ON SOCIAL NETWORKSSerhii Yevseiev0Oleksandr Laptiev1Sergii Lazarenko2Anna Korchenko3Iryna Manzhul4Simon Kuznets Kharkiv National University of EconomicsState University of TelecommunicationsNational Aviation UniversityNational Aviation UniversityNational Academy of the Security Service of UkraineThe article analyzes the parameters of social networks. The analysis is performed to identify critical threats. Threats may lead to leakage or damage to personal data. The complexity of this issue lies in the ever-increasing volume of data. Analysts note that the main causes of incidents in Internet resources are related to the action of the human factor, the mass hacking of IoT devices and cloud services. This problem is especially exacerbated by the strengthening of the digital humanistic nature of education, the growing role of social networks in human life in general. Therefore, the issue of personal information protection is constantly growing. To address this issue, let’s propose a method of assessing the dependence of personal data protection on the amount of information in the system and trust in social networks. The method is based on a mathematical model to determine the protection of personal data from trust in social networks. Based on the results of the proposed model, modeling was performed for different types of changes in confidence parameters and the amount of information in the system. As a result of mathematical modeling in the MatLab environment, graphical materials were obtained, which showed that the protection of personal data increases with increasing factors of trust in information. The dependence of personal data protection on trust is proportional to other data protection parameters. The protection of personal data is growing from growing factors of trust in information. Mathematical modeling of the proposed models of dependence of personal data protection on trust confirmed the reliability of the developed model and proved that the protection of personal data is proportional to reliability and trusthttp://journal.eu-jr.eu/engineering/article/view/1615social networktransferprotectionuserparameterinformationmetricdensitycycle
collection DOAJ
language English
format Article
sources DOAJ
author Serhii Yevseiev
Oleksandr Laptiev
Sergii Lazarenko
Anna Korchenko
Iryna Manzhul
spellingShingle Serhii Yevseiev
Oleksandr Laptiev
Sergii Lazarenko
Anna Korchenko
Iryna Manzhul
MODELING THE PROTECTION OF PERSONAL DATA FROM TRUST AND THE AMOUNT OF INFORMATION ON SOCIAL NETWORKS
EUREKA: Physics and Engineering
social network
transfer
protection
user
parameter
information
metric
density
cycle
author_facet Serhii Yevseiev
Oleksandr Laptiev
Sergii Lazarenko
Anna Korchenko
Iryna Manzhul
author_sort Serhii Yevseiev
title MODELING THE PROTECTION OF PERSONAL DATA FROM TRUST AND THE AMOUNT OF INFORMATION ON SOCIAL NETWORKS
title_short MODELING THE PROTECTION OF PERSONAL DATA FROM TRUST AND THE AMOUNT OF INFORMATION ON SOCIAL NETWORKS
title_full MODELING THE PROTECTION OF PERSONAL DATA FROM TRUST AND THE AMOUNT OF INFORMATION ON SOCIAL NETWORKS
title_fullStr MODELING THE PROTECTION OF PERSONAL DATA FROM TRUST AND THE AMOUNT OF INFORMATION ON SOCIAL NETWORKS
title_full_unstemmed MODELING THE PROTECTION OF PERSONAL DATA FROM TRUST AND THE AMOUNT OF INFORMATION ON SOCIAL NETWORKS
title_sort modeling the protection of personal data from trust and the amount of information on social networks
publisher Scientific Route OÜ
series EUREKA: Physics and Engineering
issn 2461-4254
2461-4262
publishDate 2021-01-01
description The article analyzes the parameters of social networks. The analysis is performed to identify critical threats. Threats may lead to leakage or damage to personal data. The complexity of this issue lies in the ever-increasing volume of data. Analysts note that the main causes of incidents in Internet resources are related to the action of the human factor, the mass hacking of IoT devices and cloud services. This problem is especially exacerbated by the strengthening of the digital humanistic nature of education, the growing role of social networks in human life in general. Therefore, the issue of personal information protection is constantly growing. To address this issue, let’s propose a method of assessing the dependence of personal data protection on the amount of information in the system and trust in social networks. The method is based on a mathematical model to determine the protection of personal data from trust in social networks. Based on the results of the proposed model, modeling was performed for different types of changes in confidence parameters and the amount of information in the system. As a result of mathematical modeling in the MatLab environment, graphical materials were obtained, which showed that the protection of personal data increases with increasing factors of trust in information. The dependence of personal data protection on trust is proportional to other data protection parameters. The protection of personal data is growing from growing factors of trust in information. Mathematical modeling of the proposed models of dependence of personal data protection on trust confirmed the reliability of the developed model and proved that the protection of personal data is proportional to reliability and trust
topic social network
transfer
protection
user
parameter
information
metric
density
cycle
url http://journal.eu-jr.eu/engineering/article/view/1615
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AT annakorchenko modelingtheprotectionofpersonaldatafromtrustandtheamountofinformationonsocialnetworks
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