Abstract
Social networks have increasingly become important and popular in modern times. Moreover, the influence of social networks plays a vital role in various organizations, including government organizations, academic research organizations and corporate organizations. Therefore, strategizing the optimal propagation strategy in social networks has also become more important. Increasing the precision of evaluating the propagation probability of social networks can indirectly influence the investment of cost, manpower and time for information propagation to achieve the best return. This study proposes a new algorithm, which includes a scale-free network, Barabási–Albert model, binary-addition tree (BAT) algorithm, PageRank algorithm, Personalized PageRank algorithm and a new BAT algorithm to calculate the propagation probability of social networks. The results obtained after implementing the simulation experiment of social network models show that the studied model and the proposed algorithm provide an effective method to increase the efficiency of information propagation in social networks. In this way, the maximum propagation efficiency is achieved with the minimum investment.
Funder
Ministry of Science and Technology, R.O.C
Subject
Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science
Reference97 articles.
1. Ebrahimi, P., Basirat, M., Yousefi, A., Nekmahmud, M., Gholampour, A., and Fekete-Farkas, M. (2022). Social Networks Marketing and Consumer Purchase Behavior: The Combination of SEM and Unsupervised Machine Learning Approaches. Big Data Cogn. Comput., 6.
2. A Framework for Analyzing Influencer Marketing in Social Networks: Selection and Scheduling of Influencers;Manag. Sci.,2022
3. Popova, O.I., Gagarina, N.M., Minina, T.B., and Holodilov, A.A. (2022). Advances in Social Science, Education and Humanities Research, Proceedings of the International Scientific and Practical Conference “Sustainable Development of Environment after COVID-19”, Yekaterinburg, Russia, 7–8 December 2021, Atlantis Press.
4. Benefits of WhatsApp as a Communication Media on Small Business Social Networks;J. Soc. Media,2022
5. A relationship matrix resolving model for identifying vital nodes based on community in oppor-tunistic social networks;Trans. Emerg. Tel. Tech.,2022
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