The article studies methods for analyzing and predicting information dissemination in social networks using an adapted susceptible-infected-removed (SIR) epidemiological model. It emphasizes the importance of understanding these processes for effective marketing and communication strategies in modern society, highlighting key model parameters such as agent awareness and recovery rates. Results indicate potential applications in developing algorithms for combating misinformation, although discrepancies with real data suggest further refinement is needed.
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