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Multidimensional Model of Information Struggle with Impulse Perturbation in Terms of Levy Approximation

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  • Anatolii Nikitin

    (Department of Economics, The National University of Ostroh Academy, UA-03580 Ostroh, Ukraine
    Faculty of Natural Sciences, Jan Kochanowski University, Stefana Żeromskiego 5, 25-369 Kielce, Poland)

  • Svajonė Bekešienė

    (Research Group on Logistics and Defence Technology Management, General Jonas Zemaitis Military Academy of Lithuania, Silo 5a, 10322 Vilnius, Lithuania)

  • Šárka Hošková-Mayerová

    (Department of Mathematics and Physics, University of Defence, 66210 Brno, Czech Republic)

  • Bohdan Krasiuk

    (Department of Economics, The National University of Ostroh Academy, UA-03580 Ostroh, Ukraine)

Abstract

The focus of this research was on building a decision support system for a model that characterizes the conflict interaction of n-dimensional complex systems with non-trivial internal structures. The interpretation of the new model was focused on information warfare as the impact of rare events that quickly change certain perceptions of a large number of people. Consequently, the support for various ideas experiences stochastic jumps, a phenomenon observable through a non-classical Levy approximation scheme. The essence of our decision support system lies in its ability to navigate the complex dynamics of conflict interaction among multifaceted systems. Through the utilization of advanced modeling techniques, our aim is to illuminate the complicated interplay of factors influencing information warfare and its cascading effects on societal perceptions and behaviors. Key components of our decision support system encompass model development, simulation capabilities, data integration, and visualization tools. The significance of our work lies in its potential to inform policy formulation, conflict resolution strategies, and societal resilience in the face of information warfare. By providing decision-makers with actionable intelligence and foresight into emerging threats and opportunities, our decision support system serves as a valuable tool for navigating the complexities of modern conflict dynamics. In conclusion, developing a decision support system for modeling conflict interaction in complex systems represents an essential step toward enhancing our understanding of information warfare and its consequences. Through interdisciplinary collaboration and innovative modeling techniques, we aim to provide stakeholders with the insights and capabilities needed to navigate the developing landscape of conflict and ensure the stability and resilience of society.

Suggested Citation

  • Anatolii Nikitin & Svajonė Bekešienė & Šárka Hošková-Mayerová & Bohdan Krasiuk, 2024. "Multidimensional Model of Information Struggle with Impulse Perturbation in Terms of Levy Approximation," Mathematics, MDPI, vol. 12(8), pages 1-12, April.
  • Handle: RePEc:gam:jmathe:v:12:y:2024:i:8:p:1263-:d:1380339
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    References listed on IDEAS

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    1. Wu, Feng-Shang & Chu, Wen-Lin, 2010. "Diffusion models of mobile telephony," Journal of Business Research, Elsevier, vol. 63(5), pages 497-501, May.
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