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A novel influence maximization algorithm for a competitive environment based on social media data analytics

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posted on 2022-08-09, 10:35 authored by J Tong, L Shi, L Liu, J Panneerselvam, Z Han
Online social networks are increasingly connecting people around the world. Influence maximization is a key area of research in online social networks, which identifies influential users during information dissemination. Most of the existing influence maximization methods only consider the transmission of a single channel, but real-world networks mostly include multiple channels of information transmission with competitive relationships. The problem of influence maximization in an environment involves selecting the seed node set for certain competitive information, so that it can avoid the influence of other information, and ultimately affect the largest set of nodes in the network. In this paper, the influence calculation of nodes is achieved according to the local community discovery algorithm, which is based on community dispersion and the characteristics of dynamic community structure. Furthermore, considering two various competitive information dissemination cases as an example, a solution is designed for self-interested information based on the assumption that the seed node set of competitive information is known, and a novel influence maximization algorithm of node avoidance based on user interest is proposed. Experiments conducted based on real-world Twitter dataset demonstrates the efficiency of our proposed algorithm in terms of accuracy and time against notable influence maximization algorithms.

Funding

The work was supported by the National Natural Science Foundation of China (Nos. 61502209 and 61502207).

History

Citation

J. Tong, L. Shi, L. Liu, J. Panneerselvam and Z. Han, "A novel influence maximization algorithm for a competitive environment based on social media data analytics," in Big Data Mining and Analytics, vol. 5, no. 2, pp. 130-139, June 2022, doi: 10.26599/BDMA.2021.9020024.

Author affiliation

School of Computing and Mathematical Sciences

Version

  • VoR (Version of Record)

Published in

Big Data Mining and Analytics

Volume

5

Issue

2

Pagination

130 - 139

Publisher

Tsinghua University Press

issn

2096-0654

eissn

2096-0654

Acceptance date

2021-11-12

Copyright date

2022

Available date

2022-06-01

Language

eng

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