Preview

Bulletin of the Siberian State Industrial University

Advanced search

USING A GRAPH MODEL TO DESCRIBE THE DISTRIBUTION OF INFORMATION IN A SOCIAL NETWORK

https://doi.org/10.57070/2304-4497-2022-4(42)-33-39

Abstract

The process of information dissemination among social network agents for the purpose of verification, evaluation and accuracy of the developed model is considered. The constructed model of the social network makes it possible to conduct a study of the dissemination of information taking into account the psychophysiological characteristics of the agent. The coefficients of receiving and transmitting information used in the model depend on the type of personality and are determined based on the analysis of various objects of activity of each type of personality. The source of information is one of the participants of the experiment, which is transmitted to the "inner circle" of agents. The software module of the social network model is implemented. The module allows you to conduct research on the dissemination of information, taking into account the psychophysiological characteristics of the agent. The software module has an intuitive interface, allows you to set the initial conditions of the experiment and display the results in a user-friendly form. To check the adequacy of the model, a series of field experiments were conducted. The participants who took part in the experiment, before it began, underwent a questionnaire procedure in order to establish their typological spectrum of personality using the technique of multivariate personality typing. The results of infecting network participants with information at each step of the experiment are shown.

About the Authors

Tat'jana Korablina
Siberian State Industrial University
Russian Federation

 Cand. Sci., Asist. Prof., Head of the Department of Applied Information Technologies and Programming



Nadezhda Babicheva
Siberian State Industrial University
Russian Federation

Cand. Sci., Asist. Prof., Head of the Department of Applied Information Technologies and Programming



Maksim Gusev
Siberian State Indus-trial University
Russian Federation

senior lecturer



References

1. Gusev M.M., Kiseleva T.V., Korablina T.V., Permyakova E.P. Modeling of the process of information dissemination in a social network. Sistemy upravleniya i informatsionnye tekhnologii. 2021, no. 1 (83), pp. 54–59. (In Russ.).

2. Permyakova E.P., Korablina T.V., Kiseleva T.V., Gusev M.M. Formation of effective project teams on MVPRR-technologies. Sistemy upravleniya i informatsionnye tekhnologii. 2019, no. 3 (77), pp. 67–71. (In Russ.).

3. Permyakova E.P., Kiseleva T.V. Multivariate typing of intelligence with flexible career guidance and adaptation of learning. Novokuznetsk: ITs SibGIU, 2020, 95 p. (In Russ.).

4. Rakhmetullina Z., Mukasheva R., Mukha-medova R., Batyrkhanov B. Mathematical modeling of the interests of social network users. In.: Proceedings – 2021 International Young Engineers Forum in Electrical and Computer Engineering, YEF-ECE 2021. 2021, no. 5. pp. 98–103.

5. Batura T.V. Models and methods of analysis of computer social networks. Programmnye produkty i sistemy. 2013, no. 3. (In Russ.).

6. O’Nil K., Shatt R. Data Science. Insider in-formation for beginners. Including the lan-guage of R. Sankt-Peterburg: Piter, 2019, 368 p. (In Russ.).

7. Fetinina E.P. Human multivariance in cogni-tion and creation. Novokuznetsk: ITs SibGIU, 2001, 136 p. (In Russ.).

8. Permyakova E.P., Kiseleva T.V. Mathematical modeling and analysis of nonlinear dynamic dissemination of information based on the social network of microblogs. Novokuznetsk: ITs SibGIU, 2020, 95 p. (In Russ.).

9. Liu X., He D. Nonlinear dynamic information propagation mathematic modeling and analysis based on microblog social network. Social Network Analysis and Mining. 2020, vol. 10, no. 1, pp. 87.

10. Fetinina E.P., Korablina T.V. Application of the theory of fuzzy sets in the multivariate technology of career guidance and adaptation of training. Sistemy upravleniya i informatsionnye tekhnologii. 2007, no. 1 (27), pp. 95–101. (In Russ.).

11. Wei J., Wu J., Johansson K.H., Cvetkovic V., Molinari M. On the modeling of neural cognition for social network applications. In: 1st Annual IEEE Conference on Control Technology and Applications, CCTA 2017. 2017, pp. 1569–1574.

12. Permyakova E.P., Korablina T.V., Kiseleva T.V., Gusev M.M. Formation of effective project teams on MvPROP-technologies. Sistemy upravleniya i informatsionnye tekhnologii. 2019, no. 3 (77), pp. 67–71. (In Russ.).

13. Zhou Y., Sun X., Zheng Q., Liu T., Zhang B. Analyzing and modeling dynamics of infor-mation diffusion in microblogging social network. Journal of Network and Computer Applications. 2017, vol. 86, pp. 92–102.

14. Kiseleva T.V., Korablina T.V., Gusev M.M., Guseva A.N. Classification of agents in the dissemination of information within a social network. In: Automation systems in education, science and production. LIKE '2019. Proceedings of the XII All-Russian Scientific.- practical conf. (with intern. uch.). Novokuznetsk: ITs SibGIU, 2019, pp. 301–302. (In Russ.).

15. Melekhin I.V. Managerial-activity process of human behavior when posting information in social networks. Aktual'nye napravleniya nauchnykh issledovanii: ot teorii k praktike. 2016, no. 4-1 (10), pp. 181–191. (In Russ.).

16. Liu X., He D., Liu C. Modeling information dissemination and evolution in time-varying online social network based on thermal diffusion motion. Physica A: Statistical Mechanics and its Applications. 2018, vol. 510, pp. 456–476

17. Yang D., Chen G., Liao X., Shen H., Cheng X. Modeling the reemergence of information diffusion in social network. Physica A: Statistical Mechanics and its Applications. 2018, vol. 490, pp. 1493–1500.

18. Tselykh A.A., Dedyulina M.A. Graph-theoretic approaches to modeling actor networks in research of science and technology. Modelirovanie, optimizatsiya i informatsionnye tekhnologii. 2018, no. 4 (23), pp. 244–259. (In Russ.).

19. Gorshkov S., Ilyushin E., Chernysheva A., Goiko V., Namiot D. Using topic modeling for communities clusterization in the vkontakte social network. International Journal of Open Information Technologies. 2021, vol. 9, no. 5, pp. 12–17.

20. Wang C., Jiang C., Tang S., Yang L., Guo Y., Li F. Modeling data dissemination in online social networks: a geographical perspective on bounding network traffic load. In: Proceedings of the International Symposium on Mobile Ad Hoc Networking and Computing (MobiHoc). "MobiHoc 2014 – Proceedings of the 15th ACM International Symposium on Mobile Ad Hoc Networking and Computing" 2014. 2014, pp. 53–62.


Review

For citations:


Korablina T., Babicheva N., Gusev M. USING A GRAPH MODEL TO DESCRIBE THE DISTRIBUTION OF INFORMATION IN A SOCIAL NETWORK. Bulletin of the Siberian State Industrial University. 2022;(4):33-39. (In Russ.) https://doi.org/10.57070/2304-4497-2022-4(42)-33-39

Views: 26


Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 License.


ISSN 2304 - 4497 (Print)
ISSN 2307-1710 (Online)