posted on 2023-05-23, 14:41authored byLi, W, Quan BaiQuan Bai, Zhang, M
The evolution of influencer marketing relies on a social phenomenon, i.e., influence diffusion. The modelling and analysis of influence propagation in social networks has been extensively investigated by both researchers and practitioners. Nearly all of the works in this field assume influence is driven by a single factor, e.g., friendship affiliation. However, influence spread through many other pathways, such as face-to-face interactions, phone calls, emails, or even through the reviews posted on web-pages. In this paper, we modelled the influence-diffusion space as a hybrid social network, where both direct and indirect influence are considered. Furthermore, a concrete implementation of hybrid social network, i.e., Comprehensive Influence Propagation model is articulated. The proposed model can be applied as an effective approach to tackle the multi-faceted influence diffusion problems in social networks. We also evaluated the proposed model in the influence maximization problem in different scenarios. Experimental results reveal that the proposed model can perform better than those considering a single aspect of influence.
History
Publication title
29th Australasian Joint Conference on Artificial Intelligence (AI 2016): Advances in Artificial Intelligence. Lecture Notes in Computer Science, volume 9992
Editors
B Kang and Q Bai
Pagination
597-608
ISBN
978-3-319-50126-0
Department/School
School of Information and Communication Technology
Publisher
Springer
Place of publication
New York, United States
Event title
29th Australasian Joint Conference on Artificial Intelligence (AI 2016): Advances in Artificial Intelligence