DETERMINATION OF SUBJECTS’ SIGNIFICANCE RATE AND OPTIMAL INFORMATION CONTROL IN SOCIAL NETWORKS

Authors

  • Sharif Guseynov Liepaja University (LV)
  • Aleksandrs Berežnojs ISMA University of Applied Sciences Ventspils University of Applied Sciences (LV)
  • Jekaterina Aleksejeva Liepaja University Riga Secondary School 34, Riga (LV)

DOI:

https://doi.org/10.17770/sie2021vol3.6456

Keywords:

influences degree, Nash Equilibrium, optimal control, social networks

Abstract

This paper examines social networks, where each agent is characterized by some dynamic parameters, the dynamics of which is resulting from the influence of other agents having their own objective functions and limiting factors, as well as from control/governing body with its own objective function. In this paper, referring to the type of social networks described above, the following two interrelated problems are investigated: the problem of determining the degree of information influence on social networks; the problem of finding optimal control in social networks.

 

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Published

2021-05-28

How to Cite

Guseynov, S., Berežnojs, A., & Aleksejeva, J. (2021). DETERMINATION OF SUBJECTS’ SIGNIFICANCE RATE AND OPTIMAL INFORMATION CONTROL IN SOCIAL NETWORKS. SOCIETY. INTEGRATION. EDUCATION. Proceedings of the International Scientific Conference, 3, 254-272. https://doi.org/10.17770/sie2021vol3.6456