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Diffusion prediction of competitive information with time-varying attractiveness in social networks

Published: 18 July 2024 Publication History
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  • Highlights

    Our study delved into the intricate dynamics of information propagation in social networks, unraveling the complexities of competing information from various sources.
    Unlike traditional models assuming static attractiveness, we introduce a novel attractiveness function, that consider critical parameters like attractiveness degree, information-boom time, and information prosperity index. This research unveils the dynamic nature of information attractiveness in online social networks, providing a more realistic understanding of information dissemination.
    Emphasizing the initial promotion stage, our findings suggest that businesses can significantly enhance information performance by investing more effort during the launch phase. This aligns with real-world advertising strategies, where capturing early attention is crucial for success.
    Our study reveals the pivotal role of peak attractiveness in information performance. Businesses can make their strategies by focusing on maximizing attractiveness during product promotion periods, optimizing impact while potentially reducing overall promotional efforts.
    Our analysis highlights the paramount importance of intrinsic quality in determining information promotion outcomes. While initial attraction is essential, maintaining the quality of products or services is crucial for sustained success and customer satisfaction.

    Abstract

    The ubiquity of social media has facilitated the simultaneous dissemination of large-scale information within online social networks. By assuming that information attractiveness is static, numerous studies have been devoted to the analysis of multiple information dissemination. However, real-world information attractiveness often exhibits variations throughout the dissemination process. This paper delves into the study of how time-varying information attractiveness influences the diffusion process, particularly in the context of competitive information dissemination regarding multiple products. First, we propose a Markov multi-information diffusion model, incorporating three critical parameters: the attractiveness degree, the information-boom time, and the information prosperity index, to address the dynamic nature of attractiveness. The basic reproduction number is derived, and the accuracy of the proposed model is verified. Furthermore, our numerical simulation results illustrate that both the maximal attractiveness value and the information prosperity duration significantly enhance information competitiveness, while delayed information boom time may undermine this competitiveness. In addition, it is indicated that improving the peak attractiveness is the key for time-varying information to achieve a better spreading effect. Moreover, we find that the growth of information attractiveness can even mitigate the impact of blocking the spread caused by information discarding behavior, highlighting intrinsic quality as the paramount determinant of information promotion outcomes.

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    Published In

    cover image Information Processing and Management: an International Journal
    Information Processing and Management: an International Journal  Volume 61, Issue 4
    Jul 2024
    1167 pages

    Publisher

    Pergamon Press, Inc.

    United States

    Publication History

    Published: 18 July 2024

    Author Tags

    1. Competitive information dissemination
    2. Time-varying, markov model
    3. Social networks
    4. Information attractiveness

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