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Influence Propagation Based Influencer Detection in Online Forum

journal contribution
posted on 2024-11-17, 12:52 authored by Wen Gu, Shohei Kato, Fenghui Ren, Guoxin Su, Takayuki Ito, Shinobu Hasegawa
Influential user detection is critical in supporting the human facilitator-based facilitation in the online forum. Traditional approaches to detect influential users in the online forum focus on the statistical activity information such as the number of posts. However, statistical activity information cannot fully reflect the influence that users bring to the online forum. In this paper, we propose to detect the influencers from the influence propagation perspective and focus on the influential maximization (IM) problem which aims at choosing a set of users that maximize the influence propagation from the entire social network. An online forum influence propagation network (OFIPN) is proposed to model the influence from an individual user perspective and influence propagation between users, and a heuristic algorithm that is proposed to find influential users in OFIPN. Experiments are conducted by simulations with a real-world social network. Our empirical results show the effectiveness of the proposed algorithm.

History

Journal title

IEICE Transactions on Information and Systems

Volume

E106D

Issue

4

Pagination

433-442

Language

English

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