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Majority-based Preference Diffusion on Social Networks (2312.15140v1)

Published 23 Dec 2023 in cs.SI, cs.DS, cs.MA, math.CO, and physics.soc-ph

Abstract: We study a majority based preference diffusion model in which the members of a social network update their preferences based on those of their connections. Consider an undirected graph where each node has a strict linear order over a set of $\alpha$ alternatives. At each round, a node randomly selects two adjacent alternatives and updates their relative order with the majority view of its neighbors. We bound the convergence time of the process in terms of the number of nodes/edges and $\alpha$. Furthermore, we study the minimum cost to ensure that a desired alternative will ``win'' the process, where occupying each position in a preference order of a node has a cost. We prove tight bounds on the minimum cost for general graphs and graphs with strong expansion properties. Furthermore, we investigate a more light-weight process where each node chooses one of its neighbors uniformly at random and copies its order fully with some fixed probability and remains unchanged otherwise. We characterize the convergence properties of this process, namely convergence time and stable states, using Martingale and reversible Markov chain analysis. Finally, we present the outcomes of our experiments conducted on different synthetic random graph models and graph data from online social platforms. These experiments not only support our theoretical findings, but also shed some light on some other fundamental problems, such as designing powerful countermeasures.

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References (45)
  1. Noga Alon and Joel H Spencer. 2016. The probabilistic method. John Wiley & Sons.
  2. Majority vote and monopolies in social networks. In Proceedings of the 20th International Conference on Distributed Computing and Networking. 342–351.
  3. The sharp threshold for bootstrap percolation in all dimensions. Trans. Amer. Math. Soc. 364, 5 (2012), 2667–2701.
  4. Propositionwise opinion diffusion with constraints. In Proceedings of the 4th AAMAS Workshop on Exploring Beyond the Worst Case in Computational Social Choice (EXPLORE).
  5. Robert Bredereck and Edith Elkind. 2017. Manipulating opinion diffusion in social networks. In IJCAI International Joint Conference on Artificial Intelligence. International Joint Conferences on Artificial Intelligence.
  6. Pairwise diffusion of preference rankings in social networks. In 25th International Joint Conference on Artificial Intelligence (IJCAI 2016).
  7. Markus Brill and Nimrod Talmon. 2018. Pairwise Liquid Democracy.. In 27th International Joint Conference on Artificial Intelligence (IJCAI 2018), Vol. 18. 137–143.
  8. Ning Chen. 2009. On the approximability of influence in social networks. SIAM Journal on Discrete Mathematics 23, 3 (2009), 1400–1415.
  9. Convergence of opinion diffusion is PSPACE-complete. In Proceedings of the AAAI Conference on Artificial Intelligence, Vol. 34. 7103–7110.
  10. Multiple random walks in random regular graphs. SIAM Journal on Discrete Mathematics 23, 4 (2010), 1738–1761.
  11. Collisions among random walks on a graph. SIAM Journal on Discrete Mathematics 6, 3 (1993), 363–374.
  12. Devdatt P Dubhashi and Alessandro Panconesi. 2009. Concentration of measure for the analysis of randomized algorithms. Cambridge University Press.
  13. Swap bribery. In International Symposium on Algorithmic Game Theory. Springer, 299–310.
  14. Opinion diffusion and campaigning on society graphs. Journal of Logic and Computation 32, 6 (2022), 1162–1194.
  15. Convergence in (social) influence networks. In International Symposium on Distributed Computing. Springer, 433–446.
  16. Serge Galam. 2008. Sociophysics: A review of Galam models. International Journal of Modern Physics C 19, 03 (2008), 409–440.
  17. Bernd Gärtner and Ahad N Zehmakan. 2018. Majority model on random regular graphs. In Latin American Symposium on Theoretical Informatics. Springer, 572–583.
  18. E. Goles and J. Olivos. 1980. Periodic behaviour of generalized threshold functions. Discrete Mathematics 30, 2 (1980), 187 – 189.
  19. Daniel H Greene and Donald Ervin Knuth. 1990. Mathematics for the Analysis of Algorithms. Vol. 504. Springer.
  20. Building consensus via iterative voting. In 2013 IEEE International Symposium on Information Theory. IEEE, 1082–1086.
  21. Matthew O Jackson. 2011. An overview of social networks and economic applications. Handbook of social economics 1 (2011), 511–585.
  22. Hyperbolic geometry of complex networks. Physical Review E 82, 3 (2010), 036106.
  23. Biased Majority Opinion Dynamics: Exploiting graph k𝑘kitalic_k-domination. In IJCAI 2022-International Joint Conference on Artificial Intelligence.
  24. Jure Leskovec and Andrej Krevl. 2014. SNAP Datasets: Stanford large network dataset collection.
  25. Phase transition in opinion diffusion in social networks. In 2012 IEEE international conference on Acoustics, speech and signal processing (ICASSP). IEEE, 3073–3076.
  26. Sining Li and Ahad N Zehmakan. 2023. Graph-Based Generalization of Galam Model: Convergence Time and Influential Nodes. Physics 5, 4 (2023), 1094–1108.
  27. A Fast Algorithm for Moderating Critical Nodes via Edge Removal. IEEE Transactions on Knowledge and Data Engineering (2023).
  28. Active opinion maximization in social networks. In Proceedings of the 24th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining. 1840–1849.
  29. László Lovász. 1993. Random walks on graphs. Combinatorics, Paul erdos is eighty 2, 1-46 (1993), 4.
  30. Ian Marsh. 1999. The state and the economy: opinion formation and collaboration as facets of economic management. Political Studies 47, 5 (1999), 837–856.
  31. On the hardness of approximating minimum monopoly problems. In International Conference on Foundations of Software Technology and Theoretical Computer Science. Springer, 277–288.
  32. Social influence and the collective dynamics of opinion formation. PloS one 8, 11 (2013), e78433.
  33. Ahad N Zehmakan and Serge Galam. 2020. Rumor spreading: A trigger for proliferation or fading away. Chaos: An Interdisciplinary Journal of Nonlinear Science 30, 7 (2020).
  34. Maya Okawa and Tomoharu Iwata. 2022. Predicting opinion dynamics via sociologically-informed neural networks. In Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining. 1306–1316.
  35. Charlotte Out and Ahad N Zehmakan. 2021. Majority vote in social networks: Make random friends or be stubborn to overpower elites. In 30th International Joint Conference on Artificial Intelligence (IJCAI 2021). 349–355.
  36. Svatopluk Poljak and Daniel Turzík. 1986. On pre-periods of discrete influence systems. Discrete Applied Mathematics 13, 1 (1986), 33–39.
  37. A short introduction to preferences: between artificial intelligence and social choice. Synthesis Lectures on Artificial Intelligence and Machine Learning 5, 4 (2011), 1–102.
  38. Alan D Taylor. 2005. Social choice and the mathematics of manipulation. Cambridge University Press.
  39. Self-organized collective decision making: the weighted voter model.. In AAMAS. 45–52.
  40. MK Vijaymeena and K Kavitha. 2016. A survey on similarity measures in text mining. Machine Learning and Applications: An International Journal 3, 2 (2016), 19–28.
  41. Ahad N Zehmakan. 2020. Opinion forming in Erdős–Rényi random graph and expanders. Discrete Applied Mathematics 277 (2020), 280–290.
  42. Ahad N Zehmakan. 2021. Majority opinion diffusion in social networks: An adversarial approach. In Proceedings of the AAAI Conference on Artificial Intelligence, Vol. 35. 5611–5619.
  43. Ahad N Zehmakan. 2023. Random Majority Opinion Diffusion: Stabilization Time, Absorbing States, and Influential Nodes. In Proceedings of the 2023 International Conference on Autonomous Agents and Multiagent Systems. 2179–2187.
  44. Xiaotian Zhou and Zhongzhi Zhang. 2021. Maximizing influence of leaders in social networks. In Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery & Data Mining. 2400–2408.
  45. Liwang Zhu and Zhongzhi Zhang. 2022. A Nearly-Linear Time Algorithm for Minimizing Risk of Conflict in Social Networks. In Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining. 2648–2656.

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