A dynamic algorithm based on cohesive entropy for influence maximization in social networks

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摘要

The problem of influence maximization in social networks has been widely investigated, but most previous studies have usually ignored the dynamic nature of propagation and the effects of local aggregation factors on diffusion. This paper presents a Dynamic algorithm based on cohesive Entropy for Influence Maximization (DEIM), the goal of which is to find the most influential nodes in social networks. Firstly, the Community Overlap Propagation Algorithm based on Cohesive Entropy (CECOPA) is put forward for the discovery of overlapping communities in networks, and potential nodes in the gathering area are selected to construct the candidate seed set. Then, the Optional Dynamic influence Propagation algorithm (ODP) is designed based on narrowing down the selection range of seeds. It utilizes a variety of entropy calculations to obtain the cohesive power between neighboring nodes and then determines whether the node has the ability to become a propagable pioneer of another node; thus, information continues to diffuse effectively. Finally, via many times experiments on several data sets, it is confirmed that the proposed DEIM algorithm in this paper can successfully affect the ideal number of users in different scenarios.

论文关键词:Influence maximization,Dynamic,Cohesive entropy,Overlapping community discovery

论文评审过程:Received 1 April 2020, Revised 9 September 2020, Accepted 31 October 2020, Available online 7 December 2020, Version of Record 6 January 2021.

论文官网地址:https://doi.org/10.1016/j.eswa.2020.114207