ILSHR Rumor Spreading Model by Combining SIHR and ILSR Models in Complex Networks

Автор: Adel Angali, Musa Mojarad, Hassan Arfaeinia

Журнал: International Journal of Intelligent Systems and Applications @ijisa

Статья в выпуске: 6 vol.13, 2021 года.

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Rumor is an important form of social interaction. However, spreading harmful rumors can have a significant negative impact on social welfare. Therefore, it is important to examine rumor models. Rumors are often defined as unconfirmed details or descriptions of public things, events, or issues that are made and promoted through various tools. In this paper, the Ignorant-Lurker-Spreader-Hibernator-Removal (ILSHR) rumor spreading model has been developed by combining the ILSR and SIHR epidemic models. In addition to the characteristics of the lurker group of ILSR, this model also considers the characteristics of the hibernator group of the SIHR model. Due to the complexity of the complex network structure, the state transition function for each node is defined based on their degree to make the proposed model more efficient. Numerical simulations have been performed to compare the ILSHR rumor spreading model with other similar models on the Sina Weibo dataset. The results show more effective ILSHR performance with 95.83% accuracy than CSRT and SIR-IM models.

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Complex networks, rumor spreading, SIHR model, ILSR model, ILSHR model

Короткий адрес: https://sciup.org/15018230

IDR: 15018230   |   DOI: 10.5815/ijisa.2021.06.05

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