Modeling Social Attitude to Introducing Epidemic Safety Measures in a Pandemic
- Авторлар: Azhmukhamedov I.M1, Machueva D.A2
-
Мекемелер:
- Astrakhan State University
- Grozny State Oil Technical University
- Шығарылым: № 5 (2023)
- Беттер: 68-77
- Бөлім: Control in Social and Economic Systems
- URL: https://ogarev-online.ru/1819-3161/article/view/291670
- DOI: https://doi.org/10.25728/pu.2023.5.5
- ID: 291670
Дәйексөз келтіру
Толық мәтін
Аннотация
The COVID-19 pandemic is a global human-scale emergency that has caused many negative effects. To mitigate them, it is necessary to take competent and well-founded organizational measures. Considering infectious diseases from a mathematical point of view allows solving problems in various spheres of society, studying possible scenarios, identifying epidemiological evolution patterns, and proposing intervention strategies and epidemic control options. This paper presents a mathematical model for forecasting opinion dynamics on various socially significant issues, in particular, on the introduction of epidemic safety measures in a pandemic. The model reflects the process of information exchange considering the content of disseminated information and the communicative properties of the social system and its elements (connectivity, susceptibility, and sociability).
Авторлар туралы
I. Azhmukhamedov
Astrakhan State University
Email: aim_agtu@mail.ru
Astrakhan, Russia
D. Machueva
Grozny State Oil Technical University
Email: ladyd_7@mail.ru
Grozny, Russia
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